Systems and methods for tuning parameters in statistical machine translation

Information

  • Patent Grant
  • 8694303
  • Patent Number
    8,694,303
  • Date Filed
    Wednesday, June 15, 2011
    13 years ago
  • Date Issued
    Tuesday, April 8, 2014
    10 years ago
Abstract
A method for tuning translation parameters in statistical machine translation based on ranking of the translation parameters is disclosed. According to one embodiment, the method includes sampling pairs of candidate translation units from a set of candidate translation units corresponding to a source unit, each candidate translation unit corresponding to numeric values assigned to one or more features, receiving an initial weighting value for each feature, comparing the pairs of candidate translation units to produce binary results, and using the binary results to adjust the initial weighting values to produce modified weighting values.
Description
TECHNICAL FIELD

This application relates generally to methods and systems for language translation and, more specifically, to systems and methods for tuning translation parameters in a statistical machine translation system based on a ranking of translation parameters.


BACKGROUND

The approaches described in this section could be pursued but are not necessarily approaches that have been previously conceived or pursued. Therefore, unless otherwise indicated, it should not be assumed that any of the approaches described in this section constitute prior art merely by virtue of their inclusion in this section.


Machine translation (MT), which is also known as computer-aided translation, is a rapidly growing field. It involves the use of computer software to automatically translate one natural language into another. MT takes into account the grammatical structure of a language and uses contextual rules to select among multiple meanings in order to translate sentences from a source language (to be translated) into a target language (translated). MT can be used to translate language within a variety of media such as speech, text, audio/video, web pages and so forth.


Statistical MT attempts to generate translations using statistical methods with parameters derived from the analysis of bilingual text corpora such as the Canadian Hansard corpus, the English-French record of the Canadian Parliament, or EUROPARL, records of the European Parliament, and the like. The idea behind statistical machine translation comes from information theory. Sentences are translated according to a probability distribution p(e|f) so that the string e in the target language (e.g., English) is the translation of a string fin the source language (e.g., French).


Statistical systems, may be based on the Noisy Channel Model initially developed by Claude Shannon in 1948, and generally can be interpreted as:










e
^

=




arg





max

e



p


(

e
|
f

)



=



arg





max

e







p


(

f
|
e

)




p


(
e
)








Eq
.




1








where the translation model p(f|e) is the probability that the source string is the translation of the target string, and the language model p(e) is the probability of seeing that target language string. Without going into the details, this approach states that the best translation ê (English) of a sentence f (foreign) is the sentence e that maximizes p(e|f). For a rigorous implementation of this approach, one would have to perform an exhaustive search by going through all strings e in the source language. Thus, the statistical MT models require training to optimize their parameters in order to achieve the highest translation results.


SUMMARY

In accordance with various embodiments and the corresponding disclosure thereof, systems and methods for statistical MT parameter tuning based on ranking translation parameters are provided. Unlike the popular Minimum Error Rate Training (MERT) and Margin Infused Relaxed Algorithm (MIRA) techniques, the present disclosure provides a simpler approach to tuning that scales well to high-dimensional feature spaces. According to the various embodiments disclosed herein, a tuning process is cast as a ranking problem, wherein the explicit goal is to learn to correctly rank candidate translation units. The ranking problem can be resolved using linear binary classification of candidate translation unit pairs (in other words, pair-wise ranking). This technique can be built on top of any MERT framework, which is why this technique can be easily adopted to existing MT software.


In one example embodiment, a computer-implemented method for statistical machine translation parameter tuning is provided. The method may comprise sampling pairs of candidate translation units from a set of candidate translation units corresponding to a source unit, with each candidate translation unit corresponding to numeric values assigned to one or more features, receiving an initial weighting value for each feature, comparing the pairs of candidate translation units to produce binary results, and using the binary results to adjust the initial weighting values to produce modified weighting values.


The method may further comprise calculating Bilingual Evaluation Understudy (BLEU) scores for each candidate translation unit and determining scoring functions for the candidate translation units. The ranking of translation parameters can be based on the ranking of the results of scoring functions for each pair of candidate translation units. The method may further comprise sampling one or more candidate translation units. The ranking may be applied to the translation parameters of the sampled candidate translation units. The sampling may comprise generating a plurality of candidate translation unit pairs, assigning a probability coefficient to each candidate translation unit pair, and selecting the candidate translation unit pairs having the highest score differential. The source units and the candidate translation units may comprise words, phrases, and sentences. The generating of the set of candidate translation units may comprise selecting one or more candidate translation units from a translation database. The translation parameters associated with the set of candidate translation units may comprise a candidate translation space policy, a scoring function, a BLEU score, a weight vector, and a loss function. The translation parameters may be ranked such that those candidate translation units having higher relevancy for correct translation of the source units are associated with the minimized loss function, the highest weight vector, or the best candidate translation space policy. The ranking may comprise pair-wise ranking, linear binary classification, logistic regression classification, maximum entropy classification, and iterative classification.


In yet another embodiment, a system for statistical machine translation parameter tuning may be provided. The system may comprise one or more processors configured to receive one or more source units to be translated, generate a set of candidate translation units for each source unit, determine translation parameters associated with the set of candidate translation units, rank the translation parameters, and tune the translation parameters based on the results of ranking. The system may further comprise a memory coupled to the processors, with the memory comprising code for the processors.


The processors may be further configured to calculate BLEU (Bilingual Evaluation Understudy) scores for each candidate translation unit and determine scoring functions for the candidate translation units. The ranking of translation parameters may be based on the ranking of the results of scoring functions for each pair of candidate translation units. The processors can be further configured to sample one or more candidate translation units. The rank may be applied to the translation parameters of the set of candidate translation units. The source unit and candidate translation units may comprise words, phrases, and sentences. The generating of the set of candidate translation units may comprise selecting one or more candidate translation units from a translation database.


The translation parameters associated with the set of candidate translation units, may comprise a candidate translation space policy, a scoring function, a BLEU score, a weight vector, and a loss function. The translation parameters may be ranked such that those candidate translation units having higher relevancy for correct translation of the source units are associated with the minimized loss function, the highest weight vector, and the best candidate translation space policy. The ranking may comprise pair-wise ranking, linear binary classification, logistic regression classification, maximum entropy classification, and iterative classification.


In yet another embodiment, a computer-readable medium having instructions stored thereon is provided. The instructions, when executed by one or more computers, may cause the one or more computers to receive one or more source units to be translated, generate a set of candidate translation units for each source unit, determine translation parameters associated with the candidate translation units, rank the translation parameters for the set of candidate translation units, and tune the translation parameters based on the results of the ranking.


To the accomplishment of the foregoing and related ends, the one or more aspects comprise the features hereinafter fully described and particularly pointed out in the claims. The following description and the drawings set forth in detail certain illustrative features of the one or more aspects. These features are indicative, however, of but a few of the various ways in which the principles of various aspects may be employed, and this description is intended to include all such aspects and their equivalents.





BRIEF DESCRIPTION OF THE DRAWINGS

Embodiments are illustrated by way of example and not limitation in the figures of the accompanying drawings, in which like references indicate similar elements and in which:



FIG. 1 illustrates an exemplary cloud system for practicing aspects of the present technology.



FIG. 2 is a block diagram of a computing system for implementing statistical machine translations, according to an exemplary embodiment.



FIG. 3 is a flow chart of a general method for statistical machine translation, according to an exemplary embodiment.



FIG. 4 is a flow chart of a statistical machine translation parameter tuning, according to an exemplary embodiment.



FIG. 5 is a flow chart of a method of statistical machine translation parameter tuning, according to another exemplary embodiment.



FIG. 6 illustrates the results of a synthetic data learning experiment for MERT and PRO, with and without added noise, according to certain embodiments.



FIG. 7 is a diagrammatic representation of an example machine in the form of a computer system within which a set of instructions, for the machine to perform any one or more of the methodologies discussed herein, is executed.





DETAILED DESCRIPTION

The following detailed description includes references to the accompanying drawings, which form a part of the detailed description. The drawings show illustrations in accordance with example embodiments. These example embodiments, which are also referred to herein as “examples,” are described in enough detail to enable those skilled in the art to practice the present subject matter. The embodiments can be combined, other embodiments can be utilized, or structural, logical and electrical changes can be made without departing from the scope of what is claimed. The following detailed description is, therefore, not to be taken in a limiting sense, and the scope is defined by the appended claims and their equivalents.


In this document, the terms “a” or “an” are used, as is common in patent documents, to include one or more than one. In this document, the term “or” is used to refer to a nonexclusive “or”, such that “A or B” includes “A but not B”, “B but not A”, and “A and B”, unless otherwise indicated. Furthermore, all publications, patents, and patent documents referred to in this document are incorporated by reference herein in their entirety, as though individually incorporated by reference. In the event of inconsistent usages between this document and those documents so incorporated by reference, the usage in the incorporated reference(s) should be considered supplementary to that of this document; for irreconcilable inconsistencies, the usage in this document controls.


MERT is currently the most popular way to tune the parameters of statistical machine translation systems. MERT is well-understood, easy to implement, and executes rapidly, but can have erratic behavior and does not scale well beyond a handful of features. This lack of scalability is a significant weakness, as it inhibits systems from using more than a couple dozen features to discriminate between candidate translations and stymies feature development innovation.


Several researchers have attempted to address this weakness. Recently, a new technique was developed using MIRA. This technique has been shown to perform well on large-scale tasks with hundreds or thousands of features. However, the technique is complex and architecturally different from MERT, making it difficult to use in MT software.


In accordance with various embodiments and the corresponding disclosure thereof, systems and methods for statistical MT parameter tuning are provided. Tuning the parameters of statistical MT techniques may improve quality, reliability and effectiveness of translation. To tune MT parameters, source language units (e.g., words, phrases, and sentences) may be initially processed. A computing system for statistical MT parameter tuning may receive translation source units to be translated and generate sets of candidate translation units for each source unit. Conventionally, this approach is used to generate a candidate pool and is based on selection of candidate translation units from a translation database.


Furthermore, the system may determine one or more translation parameters associated with the candidate translation units. Such parameters may refer, among other things, to scoring functions, weight vectors, and loss functions. This technique may be used to optimize one or more of these translation parameters such that the most relevant or correct candidate translation units are selected from the candidate pool, thereby improving overall translation quality. The optimization process may be based on pair-wise ranking of the candidate translation units. Specifically, a linear binary classification method may be applied to sort candidate translation units, and iteratively reveal those parameters which have the highest weight factors, minimized loss function results, and the like. The result of the ranking may then be used to tune one or more translation parameters. For example, the ranking results may allow selecting a more reliable weight factor, which may be applied to various candidate translation units. The ranking and tuning process may be implemented iteratively, and therefore the MT technique may be trained to provide optimized translation quality. Considering that the technique may handle millions of features, a sampling procedure may be applied before the optimization process to perform fast ranking. As a result, the present technique may be used to tune parameters of statistical MT models and improve quality, reliability and effectiveness of translation.


The embodiments described herein may be implemented by various means, depending on the application. For example, the embodiments may be implemented in hardware, firmware, software, or a combination thereof. For hardware implementation, the embodiments may be implemented with processors, controllers, micro-controllers, microprocessors, electronic devices, other electronic units designed to perform the functions described herein, or a combination thereof. Memory can be implemented within a processor or be external to the processor. As used herein, the term “memory” refers to any type of long term, short term, volatile, nonvolatile, or other storage device and is not to be limited to any particular type of memory or number of memories, or type of media upon which memory is stored. For firmware and/or software implementation, the embodiments may be implemented with modules such as procedures and functions described herein. Any machine-readable medium tangibly embodying instructions may be used in implementing the embodiments described herein.


Referring now to the drawings, FIG. 1 illustrates an exemplary cloud system 100 for practicing aspects of the present technology. The system 100 is shown as including a “data center” or cloud 105 including servers 110A, 110B, and 110N (cloud 105 may include any number of servers), and a cloud control system 120 according to one embodiment. Cloud control system 120 manages the hardware resources (e.g., processor, memory, and/or storage space) of servers 110A-N coupled by network 125 (e.g., a local-area or other data network) or otherwise.


Users of cloud 105 may access the services of the cloud 105 via a user system 130 (e.g., a website server) or user device 135 (e.g., a phone or PDA) running an application program interface (API). User system 130 and user device 135 communicatively couple to the cloud 105 using an access network 140 (e.g., the Internet or other telecommunications network). Access network 140 may communicate, for example, directly with server 110A or with another computing device in cloud control system 120. It will be understood that the user system 130 and user device 135 may be generally described with reference to computing system 200. For example, a user may access cloud 105 by going to a website and requesting that a statistical machine translation be performed, which is then executed by cloud control system 120 according to method 300.


Each of many potential users (e.g., hundreds or thousands) may configure one or more translations to run in cloud 105. Each translation places processing and other demands on the computing resources of cloud 105. For example, server 110A handles processing for a workload 115A, server 110B handles processing for a workload 115B, and server 110N handles processing for a workload 115N, as illustrated in FIG. 1.


Both the user system 130 and user device 135 may include any general purpose computing system that may implement a web browser application or other suitable applications adapted to request and provide information (such as web content) to and from cloud 105. A suitable example of the user system 130 and user device 135 may include the computing system 700 disclosed with reference to FIG. 7.



FIG. 2 shows a block diagram of a computing system 200 configurable to perform statistical machine translations, according to an example embodiment. The computing system 200 may include a communication module 202, a media processing module 204, a text analyzing module 206, a mapping module 208, a translating module 210, and a translation database 212. Alternative embodiments of the computing system 200 may comprise more, less, and/or functionally equivalent modules. Furthermore, all modules can be integrated within a single system, or, alternatively, can be remotely located and optionally be accessed via a third party.


It will be appreciated by one of ordinary skill that examples of the foregoing modules may be virtual, and instructions said to be executed by a module may, in fact, be retrieved and executed by a processor. The foregoing modules may also include memory cards, servers, and/or computer discs. Although various modules may be configured to perform some or all of the various steps described herein, fewer or more modules may be provided and still fall within the scope of various embodiments.


The communication module 202, in some embodiments, may be configured to receive media to be translated from a user or a corresponding system/module, and to transmit translated media to the user or corresponding system/module. Media may include text, video, audio, web pages, and so forth. The received media may be in a source language (to be translated), and the outputted media may be in a target language (translated).


The media processing module 204 may be configured to perform pre-processing of the received media or post-processing of the outputted text. Specifically, when the media is received by the communication module 202, it may be (optionally) processed by the media processing module 204 to modify text, perform optical text/character recognition, speech recognition, parsing, de-formatting, determining of the source language, noise eliminating, and so forth, depending on a particular application. The pre-processing can be performed to convert the text to be translated into a format suitable for statistical MT. The media processing module 204 may perform the reverse process when the source text is translated into the target language.


The text analyzing module 206 may be configured to perform morphological, syntactic and semantic analysis of the received and pre-processed text in the source language. This approach may help in determining the source language and characteristics of used words.


The mapping module 208 may be configured to map words/phrases in the source language to a set of candidate translation words/phrases in the target language, and to determine translation parameters. The candidate translation words/phrases in the target language may be derived from the translation database 212 using predetermined rules or criteria.


The translating module 210 may be configured to translate each word/phrase in the source language into one of the mapped words/phrases of the target language in the set. Without providing too much detail, translation is performed by an intelligent selection of mapped words/phrases based on a predetermined translation algorithm and methodology. Once translating module 210 performs the translation, the translated text may be delivered to the media processing module 204 for further post-processing and to the communication module 202 for delivering the translated media to the user or a corresponding system.


The translation database 212 may store translation data such as bilingual text corpora (e.g., the Canadian Hansard corpus, or the like), translation parameters, and criteria for conducting translations. The translation database 212 may be accessed by one or more modules 202-210 of the computing system 200.



FIG. 3 shows a general method 300 for statistical machine translation, according to an example embodiment. The method 300 may be performed by processing logic that may comprise hardware (e.g., dedicated logic, programmable logic, and microcode), software (such as software run on a general-purpose computer system or a dedicated machine), or a combination of both. In one example embodiment, the processing logic resides on or is implemented as the computing system 200.


The method 300 may commence at operation 302 when a source sentence is received within the translation process and, generally, within the processing logic for performing the translation process. For simplicity, the method 300 is said to operate on source sentences; however, those skilled in the art would appreciate that single words or phrases can be used in the translation process. As used hereinafter, the terms “source unit” and “translation unit” refer to words, phrases, and sentences. In addition, the source sentence may refer to a variety of media such as speech, text, audio/video, Internet content (such as web pages), and the like. Text transcription may be input by a speech recognition process, a character recognition process, or other process for transcribing text. The media to be translated may be stored in a memory for further processing.


At operation 304, the processing logic may optionally pre-process the received source sentences. The pre-processing may comprise de-formatting, parsing, character recognition processing, determining the language used, eliminating noise, reordering, segmenting, and so forth. In other words, pre-processing at operation 304 may be utilized for preparing received source sentences for further translation.


At operation 306, morphological, syntactic and semantic analyses may be performed. A morphological analysis may determine a word from inflections, tense, number, and part of speech. A syntactic analysis may determine whether a word is a subject or an object. A semantic analysis may determine a proper interpretation of a sentence from the results produced by the syntactic analysis. The syntactic and semantic analysis may be executed simultaneously and produce a syntactic tree structure and a semantic network, respectively. As a result, the internal structure of the sentence may be determined.


At operation 308, the internal sentence structure may be mapped to a target language. Thus, each part of the source sentence may be assigned one or more parts of the target language. At operation 310, each word (phrase) of the source language may be translated to the mapped word (phrase) of the target language. Specifically, at this operation, different statistical translation models may be used to select one or more of the mapped chunks related to the target language.


At operation 312, the processing logic may optionally perform post-processing to reorder words (phrases), generate the sentence in the target language, and so forth. At the next operation 314, the target sentence is outputted.


In other embodiments, the method 300 of statistical machine translation may include additional, fewer, or different operations for various applications.


Following is a more detailed discussion of certain terms and certain operations that appear in FIG. 3. In addition, MT parameter tuning and MT training processes will be described.


Tuning


Table 1 shows two examples of statistical machine translations from French to English. Now the tuning concept will be described with reference to these two examples.


Table 1 Examples of statistical machine translations from French to English













Source Sentence
Candidate Translations













i
f(i)
j
e(i; j)
x(i; j)
hw(i; j)
g(i; j)
















1
“il ne va pas”
1
“he goes not”
[2 4]
0
0.28




2
“he does not go”
[3 8]
2
0.42




3
“she not go”
[6 1]
−11
0.12


2
“je ne vais pas”
1
“I go not”
[−3 −3]
3
0.15




2
“we do not go”
[1 −5]
−7
0.18




3
“I do not go”
[−5 −3]
7
0.34









The space of candidate translation sentences is defined as a tuple custom characterΔ, I, J, f, e, xcustom character, where:


Δ is a positive integer referred to as the dimensionality of the space;


I is a (possibly infinite) set of positive integers, referred to as sentence indices;


J maps each sentence index to a (possibly infinite) set of positive integers, referred to as candidate indices;


f maps each sentence index to a sentence from the source language;


e maps each pair custom characteri, jcustom character ε I×J(i) to the jth target-language candidate translation of source sentence f(i); and


x maps each pair custom characteri, jcustom character ε I×J(i) to a Δ-dimension feature vector representation of e(i; j).


As used herein, the feature vector is a Δ-dimensional vector of numerical features that represent any text object. Many algorithms in machine learning require a numerical representation of objects, since such representations facilitate processing and statistical analysis. As an example, when representing texts, the feature values might correspond to term occurrence frequencies.


The example candidate space has two source sentences, three candidate translations for each source sentence, and feature vectors of dimension 2. It is an example of a finite candidate space, defined as a candidate space for which I is finite and J maps each index of I to a finite set.


A policy of candidate space custom characterΔ, I, J, f, e, xcustom character is a function that maps each member i ε I to a member of J(i). The policy corresponds to a choice of one candidate translation for each source sentence. For the example of Table 1, policy p1={1→2; 2→3} corresponds to the choice of “he does not go” for the first source sentence and “I do not go” for the second source sentence. Some policies may be better than others. Policy p2={1→3; 2→1} corresponds to the inferior translations “she not go” and “I go not.”


According to various embodiments of the present technique, the MT system distinguishes policies using a scoring function for candidate translations of the form:

hw(i,j)=w·x(i,j)  Eq. 2

where w is a weight vector of the same dimension as feature vector x(i, j). This scoring function extends to the policy p by summing the cost of each of the policy's candidate translations:

Hw(p)=ΣiεIhw(i,p(i))  Eq. 3


As can be seen in Table 1, if w=[−2; 1] is used, Hw(pi)=9 and Hw(p2)=−8.


The process of estimating the weight vector w is called parameter optimization, parameter tuning, or just tuning.


In other words, the goal of tuning is to learn to weight vector w such that Hw(p) assigns a high score to good policies and a low score to bad policies. To do so, according to the present technique, a “gold” scoring function G can be used. The G function maps each policy to a real-valued score. This gold function can be referred to a score of the BLEU algorithm.


BLEU is an algorithm for evaluating the quality of text which has been machine translated from one natural language to another. Quality is considered to be the correspondence between a machine's output and that of a human: the closer a machine translation is to a professional human translation, the better it is.


BLEU scores are calculated for individual translated segments by comparing them with a set of good quality reference translations. Those scores are then averaged over the whole corpus to reach an estimate of the translation's overall quality. Thus, BLEU is designed to approximate human judgment at a corpus level, and performs badly if used to evaluate the quality of individual sentences. BLEU's output is always a number between 0 and 1. This value indicates how similar the candidate and reference texts are, with values closer to 1 representing more similar texts.


The approach of the present technique is directed to find a weight vector w such that Hw behaves “similarly” to the G function on a candidate space s. To simplify the concept of “similarity,” a loss function ls(Hw; G) can be introduced, which returns the real-valued loss of using scoring function Hw when the gold scoring function is G, and the candidate space is s. Thus, the goal of tuning is to find a weight vector w that minimizes loss.


MERT Algorithm


Current statistical machine translation systems use log-linear models to estimate the probability of source sentence translations. It is recognized that such systems return the most probable translation. The log-linear models are parameterized, and tuning is the process of finding the optimal set of parameters, given some metric, for these log-linear models. Some approaches exist, of which MERT is the most prominent.


Referring now to the terms of provided tuning examples, in general, the candidate space may have infinite source sentences, as well as infinite candidate translations per source sentence. In practice, tuning may optimize a finite subset of source sentences and a finite subset of candidate translations, as well.


The classic tuning architecture used in the MERT approach forms this subset of candidate translations and learns the weight vector w via a feedback loop consisting of two phases.


The first phase is the candidate generation process. At this phase, candidate translations are selected from a base candidate space s and added to a finite candidate space s′ called a candidate pool.


The second phase is the optimization process. At this phase, the weight vector w is optimized to minimize loss ls′(Hw,G).


For its candidate generation phase, MERT generates the k-best candidate translations for each source sentence according to hw, where w is the weight vector from the previous optimization phase (or an arbitrary weight vector for the first iteration).


For its optimization phase, MERT defines the loss function as follows:











I
s



(


H
w

,
G

)


=



max
p



G


(
p
)



-

G
(



arg





max

p








H
w



(
p
)



)






Eq
.




4







In other words, MERT defines weight vectors w such that the “gold” function G scores Hw's best policy as highly as possible (if Hw's best policy is the same as G's best policy, then there is zero loss). Typically, the optimization phase is implemented using a line-optimization algorithm developed by Franz Josef Och in 2003. However, such algorithm, or its more developed analogues, provides satisfactory results when a candidate space with low dimensionality Δ is used. It was shown that as the dimensionality increases, the classical MERT rapidly loses the ability to learn w.


Optimization via Ranking


MERT, as well as other existing algorithms, is focused on getting a single sentence in the k-best candidate translation list. As mentioned, this is the sentence with the highest “gold” scoring function (or the highest BLEU score). However, determining the highest “gold” scoring function may not be performed well with the training/tuning algorithm, since the highest “gold” scoring function for one tested sentence may not be such for another tested sentence.


Various embodiments disclosed herein address the optimization phase of the MERT algorithm to train it to perform well for high-dimensionality candidate spaces. Practically, the present technique trains MERT by modifying the optimization process based on a ranking approach.


Assume that the gold scoring function G decomposes in the following way:










G


(
p
)


=




i

I




g


(

i
,

p


(
i
)



)







Eq
.




5








where g(i, j) is a local scoring function that scores the single candidate translation e(i, j). In Table 1, an example g was shown. For an arbitrary pair of candidate translations e(i, j) and e(i, j′), the local gold function g tells which is the better translation. It should be noted that this induces a ranking on the candidate translations for each source sentence.


According to the present technique, the pair-wise approach to ranking can be used. However, those skilled in the art would appreciate that other ranking approaches can be used, such as point-wise, list-wise, and so forth.


In the pair-wise approach, the learning task is framed as the classification of candidate pairs into two categories: correctly ordered and incorrectly ordered. Specifically, for candidate translation pair e(i, j) and e(i, j′):

g(i,j)>g(i,j′)custom characterhw(i,j)>hw(i,j′).  Eq. 6


These expressions can be re-expressed as follows:

custom characterhw(i,j)−hw(i,j′)>0  Eq.7
custom characterw·x(i,j)−w·x(i,j′)>0  Eq.8
custom characterw·(x(i,j)−x(i,j′))>0  Eq.9


Thus, optimization reduces to a classic binary classification problem. The present technique involves creating a labeled training instance for this problem by computing a difference vector x(i, j)−x (i, j′), and labeling it as a positive or negative instance based on whether, respectively, the first or second vector is superior according to the gold function g. For example, given the candidate space of Table 1, since g(1, 1)>g(1, 3), we would add ([−4, 3], +) to the training set. Thereafter, this training data can be fed directly to any off-the-shelf classification tool that returns a linear classifier in order to obtain a weight vector w that optimizes the above condition. This weight vector can then be used directly by the MT system in the subsequent candidate generation phase. It should also be understood that the exact loss function ls′(Hw,G) optimized depends on the choice of classifier.


Sampling


The pairwise nature of the approach described above creates problems with enumerating millions or even billions of pairs of feature vectors. Practically, it is not feasible to iterate all possible pairs of feature vectors in the optimizing process within reasonable timeframes.


The present technique, according to various embodiments, involves taking samples of pairs of feature vectors from the candidate spaces and evaluating each of these samples. It was shown that this approach gives great simplicity to the overall tuning process.


More specifically, for each source sentence i, a sampler, according to one embodiment, generates Γ candidate translation pairs custom characterj, j′custom character and accepts each pair with probability αi(|g(i, j)−g (i, j′)|). Among the accepted pairs, it keeps the Ξ pairs with the greatest score differential and adds these to the training data. The pseudocode can be expressed as follows:


1: V=custom charactercustom character


2: For Γ samplings do


3: Choose custom characterj, jcustom character ε J(i)×J(i) uniformly at random.


4: With probability αi(|g(i, j)−g (i, j′)|), add

(|x(i,j)−x(i,j′),sign(g(i,j)−g(i,j′)|) and
(|x(i,j′)−x(i,j),sign(g(i,j′)−g(i,j)|)to V


5: Sort V decreasingly by |(g(i, j)−g(i, j′)|


6: Return the first Ξ members of V.


Those who are skilled in the art would appreciate that many different ways to perform sampling exist, and the provided embodiments serve merely as an example.


Referring now to FIG. 4, it shows the method 400 of statistical machine translation parameter tuning, according to an example embodiment. The method 400 may be performed by processing logic that may comprise hardware (e.g., dedicated logic, programmable logic, and microcode), software (such as software run on a general-purpose computer system or a dedicated machine), or a combination of both. In one example embodiment, method 400 may be implemented at the computing system 200 shown in FIG. 2.


The method 400 may commence at operation 402 with the processing logic sampling a pair of candidate translation units from a set of candidate translation units corresponding to a source unit. Each candidate translation unit may correspond to numeric values assigned to one or more features and a set of candidate translation units may be generated for each source unit. As used herein, source units may refer to words, phrases and sentences. This set was previously mentioned as a “candidate pool.” In one example embodiment, the set is generated based on the intelligent selection of one or more candidate translation units from a translation database. For instance, text corpora such as the Canadian Hansard corpus can be used.


At operation 404, an initial weighing value for each feature can be received. According to various embodiments, the initial weighing value may refer to one or more of candidate translation space policy, dimensionality of the candidate translation space, a feature vector, a scoring function, a BLEU score, a weight vector, and a loss function. One or more of the mentioned weighing values can be derived from each other.


At operation 406, the pair of candidate translation units can be compared to produce a binary result. At operation 408, this binary result may be used to adjust the initial weighting values to produce modified weighting values. This can be achieved, for example, by assigning a vector to each of the pair of candidate translation units, the vector including a set of values, each value corresponding to a parameter. The candidate translation unit vectors may be subtracted, and the resultant vector may be labeled with a value of 1 (if the first candidate translation unit is a better translation than the second candidate translation unit) or −1 (if the first candidate translation unit is a worse translation than the second candidate translation unit). Once the resultant vector is labeled, the value associated with the resultant vector may be used to adjust the initial weighting values (e.g., by adding or subtracting 1 to/from one or more initial weighing values). The methodology used to adjust weighting values may be selected from one or more of pair-wise ranking, linear binary classification, logistic regression classification, maximum entropy classification, iterative classification, and any other appropriate machine learning algorithms. According to the present technique, the weighting values are adjusted such that those candidate translation units having a higher relevancy for correct translation of the source units are associated with one or more of the minimized loss function, the highest weight vector, and the best candidate translation space policy.



FIG. 5 shows a method 500 for statistical machine translation parameter tuning, according to another example embodiment. The method 500 may be performed by processing logic that may comprise hardware (e.g., dedicated logic, programmable logic, and microcode), software (such as software run on a general-purpose computer system or a dedicated machine), or a combination of both. In one example embodiment, the processing logic to perform the method 500 may be implemented as the computing system 200 shown in FIG. 2.


The method 500 may commence at operation 502 when one or more source units to be translated are received by the processing logic. As used herein, units may refer to words, phrases and sentences. At the next operation 504, a set of candidate translation units is generated for each source unit.


At operation 506, two or more candidate translation units are sampled. At operation 508, BLEU scores for each candidate translation unit are calculated. And at the next operation 510, scoring functions for the candidate translation units are determined.


At operation 512, the scoring functions are ranked for the sampled candidate translation units. As mentioned above, the ranking may refer to one or more of pair-wise ranking, pointwise ranking, listwise ranking, or other ranking approaches and may involve linear binary classification, logistic regression classification, maximum entropy classification, iterative classification, and any other appropriate machine learning techniques.


According to the example embodiment, the scoring functions are ranked such that those candidate translation units having higher relevancy for correct translation of the source units are associated with one or more of the minimized loss function, the highest weight vector, and the best candidate translation space policy.


At operation 514, the scoring functions are tuned based on the result of ranking such that the statistical machine translation method is trained.


Experiments


To understand the effectiveness of the present technique, comparative experiments were performed with relation to the traditional MERT algorithm and the MERT algorithm using PRO, as described above. The particulars of the experiment are as follows:


1. The “gold” scoring function G was created. This is a linear function of the same form as Hw, i.e., G(p)=Hw′(p) for some “gold” weight vector w*. Under this assumption, the role of the optimization phase reduces to learning back the gold weight vector w*.


2. The Δ-dimensionality candidate pool was created with 500 source “sentences” and 100 candidate “translations” per sentence. The corresponding feature vectors were created by drawing Δ random real numbers uniformly from the interval [0; 500].


3. Then, the classic MERT's linear optimization was run on this synthetic candidate pool, and the learned weight vector w was compared to the gold weight vector w* using cosine similarity.


MERT was run by generating 20 random starting weight vectors and hill-climbing on each vector independently until no further progress was made, then choosing the final weight vector that minimized loss. Various dimensionalities were tried from 10 to 1000. Each setting was repeated three times, generating different random data each time. FIG. 6 provides the results of this experiment. For each repetition of each setting, the cosine similarity of the learned w and the gold w* is plotted as a function of dimensionality, and a regression curve is fitted to the points. The results shown in FIG. 6, under the caption “MERT”, indicate that as the dimensionality of the problem increases, MERT rapidly loses the ability to learn w*.


It should be noted that this synthetic problem is considerably easier than a real MT scenario, where the data is noisy and interdependent, and the “gold” scoring function is nonlinear. If MERT cannot scale in this simple scenario, it has little hope of succeeding in a high-dimensionality deployment scenario.


Thereafter, the same data experiment was performed for the MERT using the pair-wise ranking optimization (PRO) approach, as described herein with reference to FIG. 3 and FIG. 4. Throughout all experiments with PRO, Γ=5000, Ξ=50, and the following step function for each αi was used:










α


(
n
)


=

{



0




if





n

<
0.05





1


otherwise








Eq
.




10







In this experiment, the MegaM software was used (i.e., the maximum entropy classification software developed by Hal Daumé in 2004) as a binary classifier and was run “out of the box” (i.e., with all default settings for binary classification). The results of this experiment are also shown in FIG. 6, under the caption “PRO”. FIG. 6 shows that PRO is able to learn w* nearly perfectly at all dimensionalities from 10 to 1000.


In a realistic machine translation scenario the relationship between g and hw, would not be so close. To encourage a disconnect between g and hw′ and make the synthetic scenario look more like MT reality, the synthetic experiments described above were repeated but noise was added to each feature vector, drawn from a zero-mean Gaussian with a standard deviation of 500. The noise makes the ability of a system to learn w* much more difficult. The results of the noisy synthetic experiments, also shown in FIG. 6 (the lines labeled “Noisy”), show that the pair-wise ranking approach is less successful than before at learning w* at high dimensionality, but still greatly outperforms MERT.



FIG. 7 shows a diagrammatic representation of a computing device for a machine in the example electronic form of a computer system 700, within which a set of instructions for causing the machine to perform any one or more of the methodologies discussed herein can be executed. In various example embodiments, the machine operates as a standalone device or can be connected (e.g., networked) to other machines. In a networked deployment, the machine can operate in the capacity of a server or a client machine in a server-client network environment, or as a peer machine in a peer-to-peer (or distributed) network environment. The machine can be a personal computer (PC), a tablet PC, a set-top box (STB), a Personal Digital Assistant (PDA), a cellular telephone, a portable music player (e.g., a portable hard drive audio device, such as an Moving Picture Experts Group Audio Layer 3 (MP3) player), a web appliance, a network router, a switch, a bridge, or any machine capable of executing a set of instructions (sequential or otherwise) that specify actions to be taken by that machine. Further, while only a single machine is illustrated, the term “machine” shall also be taken to include any collection of machines that individually or jointly execute a set (or multiple sets) of instructions to perform any one or more of the methodologies discussed herein.


The example computer system 700 includes a processor or multiple processors 702 (e.g., a central processing unit (CPU), a graphics processing unit (GPU), or both), and a main memory 704 and a static memory 706, which communicate with each other via a bus 708. The computer system 700 can further include a video display unit 710 (e.g., a liquid crystal display (LCD) or a cathode ray tube (CRT)). The computer system 700 also includes at least one input device 712, such as an alphanumeric input device (e.g., a keyboard), a cursor control device (e.g., a mouse), a microphone, and so forth. The computer system 700 also includes a disk drive unit 714, a signal generation device 716 (e.g., a speaker), and a network interface device 718.


The disk drive unit 714 includes a machine-readable medium 720, which stores one or more sets of instructions and data structures (e.g., instructions 722) embodying or utilized by any one or more of the methodologies or functions described herein. The instructions 722 can also reside, completely or at least partially, within the main memory 704 and/or within the processors 702 during execution thereof by the computer system 700. The main memory 704 and the processors 702 also constitute machine-readable media.


The instructions 722 can further be transmitted or received over a network 724 via the network interface device 718 utilizing any one of a number of well-known transfer protocols (e.g., Hyper Text Transfer Protocol (HTTP), CAN, Serial, and Modbus).


While the computer-readable medium 720 is shown in an example embodiment to be a single medium, the term “computer-readable medium” should be taken to include a single medium or multiple media (e.g., a centralized or distributed database, and/or associated caches and servers) that store the one or more sets of instructions. The term “computer-readable medium” shall also be taken to include any medium that is capable of storing, encoding, or carrying a set of instructions for execution by the machine and that causes the machine to perform any one or more of the methodologies of the present application, or that is capable of storing, encoding, or carrying data structures utilized by or associated with such a set of instructions. The term “computer-readable medium” shall accordingly be taken to include, but not be limited to, solid-state memories, optical and magnetic media. Such media can also include, without limitation, hard disks, floppy disks, flash memory cards, digital video disks, random access memory (RAM), read only memory (ROM), and the like.


The example embodiments described herein can be implemented in an operating environment comprising computer-executable instructions (e.g., software) installed on a computer, in hardware, or in a combination of software and hardware. The computer-executable instructions can be written in a computer programming language or can be embodied in firmware logic. If written in a programming language conforming to a recognized standard, such instructions can be executed on a variety of hardware platforms and for interfaces to a variety of operating systems. Although not limited thereto, computer software programs for implementing the present method can be written in any number of suitable programming languages such as, for example, Hypertext Markup Language (HTML), Dynamic HTML, Extensible Markup Language (XML), Extensible Stylesheet Language (XSL), Document Style Semantics and Specification Language (DSSSL), Cascading Style Sheets (CSS), Synchronized Multimedia Integration Language (SMIL), Wireless Markup Language (WML), Java™, Jini™, C, C++, Perl, UNIX Shell, Visual Basic or Visual Basic Script, Virtual Reality Markup Language (VRML), ColdFusion™ or other compilers, assemblers, interpreters or other computer languages or platforms.


Thus, systems and methods for statistical machine translation parameter tuning based on a ranking of translation parameters are disclosed. The disclosed technology provides a simple approach to tuning translation parameters that scales similarly to high-dimensional feature spaces. The authors have demonstrated that the technique exhibits reliable behavior, scales gracefully to high-dimensional feature spaces, and can be remarkably easy to implement with existing MT software.


Although embodiments have been described with reference to specific example embodiments, it will be evident that various modifications and changes can be made to these example embodiments without departing from the broader spirit and scope of the present application. Accordingly, the specification and drawings are to be regarded in an illustrative rather than a restrictive sense.

Claims
  • 1. A computer-implemented method for statistical machine translation (MT) weight tuning, the method comprising: executing instructions stored in memory by a processor to: sample a pair of candidate translation units from a set of candidate translation units corresponding to a source unit, each candidate translation unit corresponding to unique numeric values assigned to one or more features;receive an initial weighting value for each feature;compare the pair of candidate translation units to produce a binary result; anduse the binary result to adjust the initial weighting values to produce modified weighting values using the processor.
  • 2. The method of claim 1, further comprising: calculating BLEU (Bilingual Evaluation Understudy) scores for each candidate translation unit; anddetermining scoring functions for the candidate translation units.
  • 3. The method of claim 1, further comprising ranking the initial weighting values for two or more candidate translation units, wherein the ranking is based on a ranking of results of scoring functions for one or more pairs of candidate translation units.
  • 4. The method of claim 3, wherein the ranking is applied to translation parameters of the sampled candidate translation units.
  • 5. The method of claim 3, wherein the ranking comprises one or more of the following: a pair-wise ranking, a linear binary classification, a logistic regression classification, a maximum entropy classification, and an iterative classification.
  • 6. The method of claim 1, wherein the sampling comprises: generating a plurality of candidate translation unit pairs;assigning a probability coefficient to each candidate translation unit pair; andselecting the candidate translation unit pairs having the highest score differential.
  • 7. The method of claim 1, wherein the source unit and candidate translation units comprise one or more of the following: a word, a phrase, and a sentence.
  • 8. The method of claim 6, wherein the generating of the set of candidate translation units comprises selecting one or more candidate translation units from a translation database.
  • 9. The method of claim 1, wherein the translation parameters, associated with the candidate translation units, comprise one or more of the following: a candidate translation space policy, a scoring function, a BLEU score, a weight vector, and a loss function.
  • 10. The method of claim 9, wherein the translation parameters are ranked such that candidate translation units having higher relevancy for a correct translation of the source units are associated with one or more of the following: a minimized loss function, a highest weight vector, and a best candidate translation space policy.
  • 11. A system for statistical machine translation (MT) parameter tuning, the system comprising: a memory for storing executable instructions for tuning statistical MT parameters; anda processor for executing the executable instructions stored in memory, the executable instructions comprising: a text analyzing module to sample a pair of candidate translation units from a set of candidate translation units corresponding to a source unit, each candidate translation unit corresponding to numeric values assigned to one or more features;a communication module to receive an initial weighting value for each feature;a mapping module comparing the pair of candidate translation units to produce a binary result; anda translating module to adjust the initial weighting values to produce modified weighting values based on the binary result.
  • 12. The system of claim 11, wherein the translating module is further configured to: calculate BLEU (Bilingual Evaluation Understudy) scores for each candidate translation unit; anddetermine scoring functions for the candidate translation units.
  • 13. The system of claim 11, further comprising ranking the initial weighting values for two or more candidate translation units, wherein the ranking is based on a ranking of results of scoring functions for one or more pairs of candidate translation units.
  • 14. The system of claim 13, wherein the translating module is further configured to sample two or more candidate translation units, wherein the ranking is applied to translation parameters of the sampled candidate translation units.
  • 15. The system of claim 13, wherein the ranking comprises one or more of the following: a pair-wise ranking, a linear binary classification, a logistic regression classification, a maximum entropy classification, and an iterative classification.
  • 16. The system of claim 11, wherein the source unit and candidate translation units comprise one or more of the following: a word, a phrase, and a sentence.
  • 17. The system of claim 11, wherein generating of the set of candidate translation units comprises selecting one or more candidate translation units from a translation database.
  • 18. The system of claim 11, wherein the translation parameters associated with the candidate translation units comprise one or more of the following: a candidate translation space policy, a scoring function, a BLEU score, a weight vector, and a loss function.
  • 19. The system of claim 18, wherein the translation parameters are ranked so that candidate translation units having higher relevancy for a correct translation of the source units are associated with one or more of the following: a minimized loss function, a highest weight vector, and a best candidate translation space policy.
  • 20. The system of claim 11, wherein the processor executes the executable instructions under direction of a cloud control system, the cloud control system managing a cloud.
  • 21. A computer-readable medium having instructions stored thereon, which when executed by one or more computers, causes the one or more computers to: sample a pair of candidate translation units from a set of candidate translation units corresponding to a source unit, each candidate translation unit corresponding to unique numeric values assigned to one or more features;receive an initial weighting value for each feature;compare the pair of candidate translation units to produce a binary result; anduse the binary result to adjust the initial weighting values to produce modified weighting values.
US Referenced Citations (359)
Number Name Date Kind
4502128 Okajima et al. Feb 1985 A
4599691 Sakaki et al. Jul 1986 A
4615002 Innes Sep 1986 A
4661924 Okamoto et al. Apr 1987 A
4787038 Doi et al. Nov 1988 A
4791587 Doi Dec 1988 A
4800522 Miyao et al. Jan 1989 A
4814987 Miyao et al. Mar 1989 A
4942526 Okajima et al. Jul 1990 A
4980829 Okajima et al. Dec 1990 A
5020112 Chou May 1991 A
5088038 Tanaka et al. Feb 1992 A
5091876 Kumano et al. Feb 1992 A
5146405 Church Sep 1992 A
5167504 Mann Dec 1992 A
5181163 Nakajima et al. Jan 1993 A
5212730 Wheatley et al. May 1993 A
5218537 Hemphill et al. Jun 1993 A
5220503 Suzuki et al. Jun 1993 A
5267156 Nomiyama Nov 1993 A
5268839 Kaji Dec 1993 A
5295068 Nishino et al. Mar 1994 A
5302132 Corder Apr 1994 A
5311429 Tominaga May 1994 A
5387104 Corder Feb 1995 A
5408410 Kaji Apr 1995 A
5432948 Davis et al. Jul 1995 A
5442546 Kaji et al. Aug 1995 A
5477450 Takeda et al. Dec 1995 A
5477451 Brown et al. Dec 1995 A
5495413 Kutsumi et al. Feb 1996 A
5497319 Chong et al. Mar 1996 A
5510981 Berger et al. Apr 1996 A
5528491 Kuno et al. Jun 1996 A
5535120 Chong et al. Jul 1996 A
5541836 Church et al. Jul 1996 A
5541837 Fushimoto Jul 1996 A
5548508 Nagami Aug 1996 A
5644774 Fukumochi et al. Jul 1997 A
5675815 Yamauchi et al. Oct 1997 A
5687383 Nakayama et al. Nov 1997 A
5696980 Brew Dec 1997 A
5724593 Hargrave, III et al. Mar 1998 A
5752052 Richardson et al. May 1998 A
5754972 Baker et al. May 1998 A
5761631 Nasukawa Jun 1998 A
5761689 Rayson et al. Jun 1998 A
5768603 Brown et al. Jun 1998 A
5779486 Ho et al. Jul 1998 A
5781884 Pereira et al. Jul 1998 A
5794178 Caid et al. Aug 1998 A
5805832 Brown et al. Sep 1998 A
5806032 Sproat Sep 1998 A
5819265 Ravin et al. Oct 1998 A
5826219 Kutsumi Oct 1998 A
5826220 Takeda et al. Oct 1998 A
5845143 Yamauchi et al. Dec 1998 A
5848385 Poznanski et al. Dec 1998 A
5848386 Motoyama Dec 1998 A
5855015 Shoham Dec 1998 A
5864788 Kutsumi Jan 1999 A
5867811 O'Donoghue Feb 1999 A
5870706 Alshawi Feb 1999 A
5893134 O'Donoghue et al. Apr 1999 A
5903858 Saraki May 1999 A
5907821 Kaji et al. May 1999 A
5909681 Passera et al. Jun 1999 A
5930746 Ting Jul 1999 A
5966685 Flanagan et al. Oct 1999 A
5966686 Heidorn et al. Oct 1999 A
5983169 Kozma Nov 1999 A
5987402 Murata et al. Nov 1999 A
5987404 Della Pietra et al. Nov 1999 A
5991710 Papineni et al. Nov 1999 A
5995922 Penteroudakis et al. Nov 1999 A
6018617 Sweitzer et al. Jan 2000 A
6031984 Walser Feb 2000 A
6032111 Mohri Feb 2000 A
6047252 Kumano et al. Apr 2000 A
6064819 Franssen et al. May 2000 A
6064951 Park et al. May 2000 A
6073143 Nishikawa et al. Jun 2000 A
6077085 Parry et al. Jun 2000 A
6092034 McCarley et al. Jul 2000 A
6119077 Shinozaki Sep 2000 A
6131082 Hargrave, III et al. Oct 2000 A
6161082 Goldberg et al. Dec 2000 A
6182014 Kenyon et al. Jan 2001 B1
6182027 Nasukawa et al. Jan 2001 B1
6205456 Nakao Mar 2001 B1
6206700 Brown et al. Mar 2001 B1
6223150 Duan et al. Apr 2001 B1
6233544 Alshawi May 2001 B1
6233545 Datig May 2001 B1
6233546 Datig May 2001 B1
6236958 Lange et al. May 2001 B1
6269351 Black Jul 2001 B1
6275789 Moser et al. Aug 2001 B1
6278967 Akers et al. Aug 2001 B1
6278969 King et al. Aug 2001 B1
6285978 Bernth et al. Sep 2001 B1
6289302 Kuo Sep 2001 B1
6304841 Berger et al. Oct 2001 B1
6311152 Bai et al. Oct 2001 B1
6317708 Witbrock et al. Nov 2001 B1
6327568 Joost Dec 2001 B1
6330529 Ito Dec 2001 B1
6330530 Horiguchi et al. Dec 2001 B1
6356864 Foltz et al. Mar 2002 B1
6360196 Poznanski et al. Mar 2002 B1
6389387 Poznanski et al. May 2002 B1
6393388 Franz et al. May 2002 B1
6393389 Chanod et al. May 2002 B1
6415250 van den Akker Jul 2002 B1
6460015 Hetherington et al. Oct 2002 B1
6470306 Pringle et al. Oct 2002 B1
6473729 Gastaldo et al. Oct 2002 B1
6473896 Hicken et al. Oct 2002 B1
6480698 Ho et al. Nov 2002 B2
6490549 Ulicny et al. Dec 2002 B1
6498921 Ho et al. Dec 2002 B1
6502064 Miyahira et al. Dec 2002 B1
6529865 Duan et al. Mar 2003 B1
6535842 Roche et al. Mar 2003 B1
6587844 Mohri Jul 2003 B1
6609087 Miller et al. Aug 2003 B1
6647364 Yumura et al. Nov 2003 B1
6691279 Yoden et al. Feb 2004 B2
6745161 Arnold et al. Jun 2004 B1
6745176 Probert, Jr. et al. Jun 2004 B2
6757646 Marchisio Jun 2004 B2
6778949 Duan et al. Aug 2004 B2
6782356 Lopke Aug 2004 B1
6810374 Kang Oct 2004 B2
6848080 Lee et al. Jan 2005 B1
6857022 Scanlan Feb 2005 B1
6885985 Hull Apr 2005 B2
6901361 Portilla May 2005 B1
6904402 Wang et al. Jun 2005 B1
6952665 Shimomura et al. Oct 2005 B1
6983239 Epstein Jan 2006 B1
6996518 Jones et al. Feb 2006 B2
6996520 Levin Feb 2006 B2
6999925 Fischer et al. Feb 2006 B2
7013262 Tokuda et al. Mar 2006 B2
7016827 Ramaswamy et al. Mar 2006 B1
7016977 Dunsmoir et al. Mar 2006 B1
7024351 Wang Apr 2006 B2
7031911 Zhou et al. Apr 2006 B2
7050964 Menzes et al. May 2006 B2
7085708 Manson Aug 2006 B2
7089493 Hatori et al. Aug 2006 B2
7103531 Moore Sep 2006 B2
7107204 Liu et al. Sep 2006 B1
7107215 Ghali Sep 2006 B2
7113903 Riccardi et al. Sep 2006 B1
7143036 Weise Nov 2006 B2
7146358 Gravano et al. Dec 2006 B1
7149688 Schalkwyk Dec 2006 B2
7171348 Scanlan Jan 2007 B2
7174289 Sukehiro Feb 2007 B2
7177792 Knight et al. Feb 2007 B2
7191115 Moore Mar 2007 B2
7194403 Okura et al. Mar 2007 B2
7197451 Carter et al. Mar 2007 B1
7206736 Moore Apr 2007 B2
7209875 Quirk et al. Apr 2007 B2
7219051 Moore May 2007 B2
7239998 Xun Jul 2007 B2
7249012 Moore Jul 2007 B2
7249013 Al-Onaizan et al. Jul 2007 B2
7283950 Pournasseh et al. Oct 2007 B2
7295962 Marcu Nov 2007 B2
7302392 Thenthiruperai et al. Nov 2007 B1
7319949 Pinkham Jan 2008 B2
7340388 Soricut et al. Mar 2008 B2
7346487 Li Mar 2008 B2
7346493 Ringger et al. Mar 2008 B2
7349839 Moore Mar 2008 B2
7349845 Coffman et al. Mar 2008 B2
7356457 Pinkham et al. Apr 2008 B2
7369998 Sarich et al. May 2008 B2
7373291 Garst May 2008 B2
7383542 Richardson et al. Jun 2008 B2
7389222 Langmead et al. Jun 2008 B1
7389234 Schmid et al. Jun 2008 B2
7403890 Roushar Jul 2008 B2
7409332 Moore Aug 2008 B2
7409333 Wilkinson et al. Aug 2008 B2
7447623 Appleby Nov 2008 B2
7454326 Marcu et al. Nov 2008 B2
7496497 Liu Feb 2009 B2
7533013 Marcu May 2009 B2
7536295 Cancedda et al. May 2009 B2
7546235 Brockett et al. Jun 2009 B2
7552053 Gao et al. Jun 2009 B2
7565281 Appleby Jul 2009 B2
7574347 Wang Aug 2009 B2
7580830 Al-Onaizan et al. Aug 2009 B2
7587307 Cancedda et al. Sep 2009 B2
7620538 Marcu et al. Nov 2009 B2
7620632 Andrews Nov 2009 B2
7624005 Koehn et al. Nov 2009 B2
7624020 Yamada et al. Nov 2009 B2
7627479 Travieso et al. Dec 2009 B2
7680646 Lux-Pogodalla et al. Mar 2010 B2
7689405 Marcu Mar 2010 B2
7698124 Menezes et al. Apr 2010 B2
7698125 Graehl et al. Apr 2010 B2
7707025 Whitelock Apr 2010 B2
7711545 Koehn May 2010 B2
7716037 Precoda et al. May 2010 B2
7801720 Satake et al. Sep 2010 B2
7813918 Muslea et al. Oct 2010 B2
7822596 Elgazzar et al. Oct 2010 B2
7925494 Cheng et al. Apr 2011 B2
7957953 Moore Jun 2011 B2
7974833 Soricut et al. Jul 2011 B2
8060360 He Nov 2011 B2
8145472 Shore et al. Mar 2012 B2
8214196 Yamada et al. Jul 2012 B2
8244519 Bicici et al. Aug 2012 B2
8265923 Chatterjee et al. Sep 2012 B2
8615389 Marcu Dec 2013 B1
20010009009 Iizuka Jul 2001 A1
20010029455 Chin et al. Oct 2001 A1
20020002451 Sukehiro Jan 2002 A1
20020013693 Fuji Jan 2002 A1
20020040292 Marcu Apr 2002 A1
20020046018 Marcu et al. Apr 2002 A1
20020046262 Heilig et al. Apr 2002 A1
20020059566 Delcambre et al. May 2002 A1
20020078091 Vu et al. Jun 2002 A1
20020087313 Lee et al. Jul 2002 A1
20020099744 Coden et al. Jul 2002 A1
20020111788 Kimpara Aug 2002 A1
20020111789 Hull Aug 2002 A1
20020111967 Nagase Aug 2002 A1
20020143537 Ozawa et al. Oct 2002 A1
20020152063 Tokieda et al. Oct 2002 A1
20020169592 Aityan Nov 2002 A1
20020188438 Knight et al. Dec 2002 A1
20020188439 Marcu Dec 2002 A1
20020198699 Greene et al. Dec 2002 A1
20020198701 Moore Dec 2002 A1
20020198713 Franz et al. Dec 2002 A1
20030009322 Marcu Jan 2003 A1
20030023423 Yamada et al. Jan 2003 A1
20030144832 Harris Jul 2003 A1
20030154071 Shreve Aug 2003 A1
20030158723 Masuichi et al. Aug 2003 A1
20030176995 Sukehiro Sep 2003 A1
20030182102 Corston-Oliver et al. Sep 2003 A1
20030191626 Al-Onaizan et al. Oct 2003 A1
20030204400 Marcu et al. Oct 2003 A1
20030216905 Chelba et al. Nov 2003 A1
20030217052 Rubenczyk et al. Nov 2003 A1
20030233222 Soricut et al. Dec 2003 A1
20040006560 Chan et al. Jan 2004 A1
20040015342 Garst Jan 2004 A1
20040024581 Koehn et al. Feb 2004 A1
20040030551 Marcu et al. Feb 2004 A1
20040035055 Zhu et al. Feb 2004 A1
20040044530 Moore Mar 2004 A1
20040059708 Dean et al. Mar 2004 A1
20040068411 Scanlan Apr 2004 A1
20040098247 Moore May 2004 A1
20040102956 Levin May 2004 A1
20040102957 Levin May 2004 A1
20040111253 Luo et al. Jun 2004 A1
20040115597 Butt Jun 2004 A1
20040122656 Abir Jun 2004 A1
20040167768 Travieso et al. Aug 2004 A1
20040167784 Travieso et al. Aug 2004 A1
20040193401 Ringger et al. Sep 2004 A1
20040230418 Kitamura Nov 2004 A1
20040237044 Travieso et al. Nov 2004 A1
20040260532 Richardson et al. Dec 2004 A1
20050021322 Richardson et al. Jan 2005 A1
20050021517 Marchisio Jan 2005 A1
20050026131 Elzinga et al. Feb 2005 A1
20050033565 Koehn Feb 2005 A1
20050038643 Koehn Feb 2005 A1
20050055199 Ryzchachkin et al. Mar 2005 A1
20050060160 Roh et al. Mar 2005 A1
20050075858 Pournasseh et al. Apr 2005 A1
20050086226 Krachman Apr 2005 A1
20050102130 Quirk et al. May 2005 A1
20050125218 Rajput et al. Jun 2005 A1
20050149315 Flanagan et al. Jul 2005 A1
20050171757 Appleby Aug 2005 A1
20050204002 Friend Sep 2005 A1
20050228640 Aue et al. Oct 2005 A1
20050228642 Mau et al. Oct 2005 A1
20050228643 Munteanu et al. Oct 2005 A1
20050234701 Graehl et al. Oct 2005 A1
20050267738 Wilkinson et al. Dec 2005 A1
20060004563 Campbell et al. Jan 2006 A1
20060015320 Och Jan 2006 A1
20060015323 Udupa et al. Jan 2006 A1
20060018541 Chelba et al. Jan 2006 A1
20060020448 Chelba et al. Jan 2006 A1
20060041428 Fritsch et al. Feb 2006 A1
20060095248 Menezes et al. May 2006 A1
20060111891 Menezes et al. May 2006 A1
20060111892 Menezes et al. May 2006 A1
20060111896 Menezes et al. May 2006 A1
20060129424 Chan Jun 2006 A1
20060142995 Knight et al. Jun 2006 A1
20060150069 Chang Jul 2006 A1
20060167984 Fellenstein et al. Jul 2006 A1
20060190241 Goutte et al. Aug 2006 A1
20070016400 Soricutt et al. Jan 2007 A1
20070016401 Ehsani et al. Jan 2007 A1
20070033001 Muslea et al. Feb 2007 A1
20070050182 Sneddon et al. Mar 2007 A1
20070078654 Moore Apr 2007 A1
20070078845 Scott et al. Apr 2007 A1
20070083357 Moore et al. Apr 2007 A1
20070094169 Yamada et al. Apr 2007 A1
20070112553 Jacobson May 2007 A1
20070112555 Lavi et al. May 2007 A1
20070112556 Lavi et al. May 2007 A1
20070122792 Galley et al. May 2007 A1
20070168202 Changela et al. Jul 2007 A1
20070168450 Prajapat et al. Jul 2007 A1
20070180373 Bauman et al. Aug 2007 A1
20070219774 Quirk et al. Sep 2007 A1
20070250306 Marcu et al. Oct 2007 A1
20070265825 Cancedda et al. Nov 2007 A1
20070265826 Chen et al. Nov 2007 A1
20070269775 Andreev et al. Nov 2007 A1
20070294076 Shore et al. Dec 2007 A1
20080052061 Kim et al. Feb 2008 A1
20080065478 Kohlmeier et al. Mar 2008 A1
20080114583 Al-Onaizan et al. May 2008 A1
20080154581 Lavi et al. Jun 2008 A1
20080183555 Walk Jul 2008 A1
20080215418 Kolve et al. Sep 2008 A1
20080249760 Marcu et al. Oct 2008 A1
20080270109 Och Oct 2008 A1
20080270112 Shimohata Oct 2008 A1
20080281578 Kumaran et al. Nov 2008 A1
20080307481 Panje Dec 2008 A1
20090076792 Lawson-Tancred Mar 2009 A1
20090083023 Foster et al. Mar 2009 A1
20090119091 Sarig May 2009 A1
20090125497 Jiang et al. May 2009 A1
20090234634 Chen et al. Sep 2009 A1
20090241115 Raffo et al. Sep 2009 A1
20090326912 Ueffing Dec 2009 A1
20100017293 Lung et al. Jan 2010 A1
20100042398 Marcu et al. Feb 2010 A1
20100138213 Bicici et al. Jun 2010 A1
20100174524 Koehn Jul 2010 A1
20110029300 Marcu et al. Feb 2011 A1
20110066643 Cooper et al. Mar 2011 A1
20110082684 Soricut et al. Apr 2011 A1
20120323554 Hopkins et al. Dec 2012 A1
Foreign Referenced Citations (10)
Number Date Country
0469884 Feb 1992 EP
0715265 Jun 1996 EP
0933712 Aug 1999 EP
0933712 Jan 2001 EP
07244666 Sep 1995 JP
10011447 Jan 1998 JP
11272672 Oct 1999 JP
2004501429 Jan 2004 JP
2004062726 Feb 2004 JP
2008101837 May 2008 JP
Non-Patent Literature Citations (252)
Entry
Ueffing et al., “Using Pos Information for Statistical Machine Translation into Morphologically Rich Languages,” In EACL, 2003: Proceedings of the Tenth Conference on European Chapter of the Association for Computational Linguistics, pp. 347-354.
Frederking et al., “Three Heads are Better Than One,” In Proceedings of the 4th Conference on Applied Natural Language Processing, Stuttgart, Germany, 1994, pp. 95-100.
Och et al., “Discriminative Training and Maximum Entropy Models for Statistical Machine Translation,” In Proc. of the 40th Annual Meeting of the Association for Computational Linguistics (ACL), Philadelphia, PA, 2002.
Yasuda et al., “Automatic Machine Translation Selection Scheme to Output the Best Result,” Proc of LREC, 2002, pp. 525-528.
Papineni et al., “Bleu: a Method for Automatic Evaluation of Machine Translation”, Proc. Of the 40th Annual Meeting of the Association for Computational Linguistics (ACL), Jul. 2002, pp. 311-318.
Shaalan et al., “Machine Translation of English Noun Phrases into Arabic”, (2004), vol. 17, No. 2, International Journal of Computer Processing of Oriental Languages, 14 pages.
Isahara et al., “Analysis, Generation and Semantic Representation in CONTRAST—A Context-Based Machine Translation System”, 1995, Systems and Computers in Japan, vol. 26, No. 14, pp. 37-53.
Proz.com, Rates for proofreading versus Translating, http://www.proz.com/forum/business—issues/202-rates—for—proofreading—versus—translating.html, Apr. 23, 2009, retrieved Jul. 13, 2012.
Celine, Volume discounts on large translation project, naked translations, http://www.nakedtranslations.com/en/2007/volume-discounts-on-large-translation-projects/, Aug. 1, 2007, retrieved Jul. 16, 2012.
Graehl, J and Knight, K, May 2004, Training Tree Transducers, In NAACL-HLT (2004), pp. 105-112.
Niessen et al, “Statistical machine translation with scarce resources using morphosyntactic information”, Jun. 2004, Computational Linguistics, vol. 30, issue 2, pp. 181-204.
Liu et al., “Context Discovery Using Attenuated Bloom Filters in Ad-Hoc Networks,” Springer, pp. 13-25, 2006.
First Office Action mailed Jun. 7, 2004 in Canadian Patent Application 2408819, filed May 11, 2001.
First Office Action mailed Jun. 14, 2007 in Canadian Patent Application 2475857, filed Mar. 11, 2003.
Office Action mailed Mar. 26, 2012 in German Patent Application 10392450.7, filed Mar. 28, 2003.
First Office Action mailed Nov. 5, 2008 in Canadian Patent Application 2408398, filed Mar. 27, 2003.
Second Office Action mailed Sep. 25, 2009 in Canadian Patent Application 2408398, filed Mar. 27, 2003.
First Office Action mailed Mar. 1, 2005 in European Patent Application No. 03716920.8, filed Mar. 27, 2003.
Second Office Action mailed Nov. 9, 2006 in European Patent Application No. 03716920.8, filed Mar. 27, 2003.
Third Office Action mailed Apr. 30, 2008 in European Patent Application No. 03716920.8, filed Mar. 27, 2003.
Office Action mailed Oct. 25, 2011 in Japanese Patent Application 2007-536911 filed Oct. 12, 2005.
Office Action mailed Jul. 24, 2012 in Japanese Patent Application 2007-536911 filed Oct. 12, 2005.
Final Office Action mailed Apr. 9, 2013 in Japanese Patent Application 2007-536911 filed Oct. 12, 2005.
Office Action mailed May 13, 2005 in Chinese Patent Application 1812317.1, filed May 11, 2001.
Office Action mailed Apr. 21, 2006 in Chinese Patent Application 1812317.1, filed May 11, 2001.
Office Action mailed Jul. 19, 2006 in Japanese Patent Application 2003-577155, filed Mar. 11, 2003.
Office Action mailed Mar. 1, 2007 in Chinese Patent Application 3805749.2, filed Mar. 11, 2003.
Office Action mailed Feb. 27, 2007 in Japanese Patent Application 2002-590018, filed May 13, 2002.
Office Action mailed Jan. 26, 2007 in Chinese Patent Application 3807018.9, filed Mar. 27, 2003.
Office Action mailed Dec. 7, 2005 in Indian Patent Application 2283/DELNP/2004, filed Mar. 11, 2003.
Office Action mailed Mar. 31, 2009 in European Patent Application 3714080.3, filed Mar. 11, 2003.
Agichtein et al., “Snowball: Extracting Information from Large Plain-Text Collections,” ACM DL '00, the Fifth ACM Conference on Digital Libraries, Jun. 2, 2000, San Antonio, TX, USA.
Satake, Masaomi, “Anaphora Resolution for Named Entity Extraction in Japanese Newspaper Articles,” Master's Thesis [online], Feb. 15, 2002, School of Information Science, JAIST, Nomi, Ishikaw, Japan.
Office Action mailed Aug. 29, 2006 in Japanese Patent Application 2003-581064, filed Mar. 27, 2003.
Office Action mailed Jan. 26, 2007 in Chinese Patent Application 3807027.8, filed Mar. 28, 2003.
Office Action mailed Jul. 25, 2006 in Japanese Patent Application 2003-581063, filed Mar. 28, 2003.
Huang et al., “A syntax-directed translator with extended domain of locality,” Jun. 9, 2006, In Proceedings of the Workshop on Computationally Hard Problems and Joint Inference in Speech and Language Processing, pp. 1-8, New York City, New York, Association for Computational Linguistics.
Melamed et al., “Statistical machine translation by generalized parsing,” 2005, Technical Report 05-001, Proteus Project, New York University, http://nlp.cs.nyu.edu/pubs/.
Galley et al., “Scalable Inference and Training of Context-Rich Syntactic Translation Models,” Jul. 2006, In Proceedings of the 21st International Conference on Computational Linguistics and 44th Annual Meeting of the ACL, pp. 961-968.
Huang et al., “Statistical syntax-directed translation with extended domain of locality,” Jun. 9, 2006, In Proceedings of AMTA, pp. 1-8.
Zhang et al., “Synchronous Binarization for Machine Translations,” Jun. 4-9, 2006, in Proc. of the Human Language Technology Conference of the North American Chapter of the ACL, pp. 256-263.
Zhang et al., “Distributed Language Modeling for N-best List Re-ranking,” In Proceedings of the 2006 Conference on Empirical Methods in Natural Language Processing (Sydney, Australia, Jul. 22-23, 2006). ACL Workshops. Assoc. for Computational Linguistics, Morristown, NJ, 216-223.
“Patent Cooperation Treaty International Preliminary Report on Patentability and The Written Opinion, Internationalapplication No. PCT/US2008/004296, Oct. 6, 2009, 5 pgs.”
Document, Wikipedia.com, web.archive.org (Feb. 24, 2004) <http://web.archive.org/web/20040222202831 /http://en.wikipedia.org/wikiiDocument>, Feb. 24, 2004.
Identifying, Dictionary.com, wayback.archive.org (Feb. 28, 2007) <http://wayback.archive.org/web/200501 01OOOOOO*/http:////dictionary.reference.com//browse//identifying>, Feb. 28, 2005 <http://web.archive.org/web/20070228150533/http://dictionary.reference.com/browse/identifying>.
Koehn, P. et al, “Statistical Phrase-Based Translation,” Proceedings of HLT-NAACL 2003 Main Papers , pp. 48-54 Edmonton, May-Jun. 2003.
Abney, S.P., “Stochastic Attribute Value Grammars”, Association for Computional Linguistics, 1997, pp. 597-618.
Fox, H., “Phrasal Cohesion and Statistical Machine Translation” Proceedings of the Conference on Empirical Methods in Natural Language Processing, Philadelphia, Jul. 2002, pp. 304-311. Association for Computational Linguistics. <URL: http://acl.ldc.upenn.edu/W/W02/W02-1039.pdf>.
Tillman, C., et al, “Word Reordering and a Dynamic Programming Beam Search Algorithm for Statistical Machine Translation,” 2003, Association for Computational Linguistics, vol. 29, No. 1, pp. 97-133 <URL: http://acl.ldc.upenn.edu/J/J03/J03-1005.pdf>.
Wang, W., et al. “Capitalizing Machine Translation” In HLT-NAACL '06 Proceedings Jun. 2006. <http://www.isi.edu/natural-language/mt/hlt-naacl-06-wang.pdf>.
Langlais, P. et al., “TransType: a Computer-Aided Translation Typing System” EmbedMT '00 ANLP-NAACL 2000 Workshop: Embedded Machine Translation Systems, 2000, pp. 46-51. <http://acl.ldc.upenn.edu/W/W00/W00-0507.pdf>.
Abney, Steven P., “Parsing by Chunks,” 1991, Principle-Based Parsing: Computation and Psycholinguistics, vol. 44, pp. 257-279.
Agbago, A., et al., “True-casing for the Portage System,” In Recent Advances in Natural Language Processing (Borovets, Bulgaria), Sep. 21-23, 2005, pp. 21-24.
Al-Onaizan et al., “Statistical Machine Translation,” 1999, JHU Summer Tech Workshop, Final Report, pp. 1-42.
Al-Onaizan et al., “Translating with Scarce Resources,” 2000, 17th National Conference of the American Associationfor Artificial Intelligence, Austin, TX, pp. 672-678.
Al-Onaizan, Y. and Knight K., “Machine Transliteration of Names in Arabic Text,” Proceedings of ACL Workshop on Computational Approaches to Semitic Languages. Philadelphia, 2002.
Al-Onaizan, Y. and Knight, K., “Named Entity Translation: Extended Abstract”, 2002, Proceedings of HLT-02, SanDiego, CA.
Al-Onaizan, Y. and Knight, K., “Translating Named Entities Using Monolingual and Bilingual Resources,” 2002, Proc. of the 40th Annual Meeting of the ACL, pp. 400-408.
Alshawi et al., “Learning Dependency Translation Models as Collections of Finite-State Head Transducers,” 2000, Computational Linguistics, vol. 26, pp. 45-60.
Alshawi, Hiyan, “Head Automata for Speech Translation”, Proceedings of the ICSLP 96, 1996, Philadelphia, Pennslyvania.
Ambati, V., “Dependency Structure Trees in Syntax Based Machine Translation,” Spring 2008 Report <http://www.cs.cmu.edu/˜vamshi/publications/DependencyMT—report.pdf>, pp. 1-8.
Arbabi et al., “Algorithms for Arabic name transliteration,” Mar. 1994, IBM Journal of Research and Development, vol. 38, Issue 2, pp. 183-194.
Arun, A., et al., “Edinburgh System Description for the 2006 TC-STAR Spoken Language Translation Evaluation,” in TC-STAR Workshop on Speech-to-Speech Translation (Barcelona, Spain), Jun. 2006, pp. 37-41.
Ballesteros, L. et al., “Phrasal Translation and Query Expansion Techniques for Cross-Language Information Retrieval,” SIGIR 97, Philadelphia, PA, © 1997, pp. 84-91.
Bangalore, S. and Rambow, O., “Evaluation Metrics for Generation,” 2000, Proc. of the 1st International NaturalLanguage Generation Conf., vol. 14, pp. 1-8.
Bangalore, S. and Rambow, O., “Using TAGs, a Tree Model, and a Language Model for Generation,” May 2000, Workshop TAG+5, Paris.
Bangalore, S. and Rambow, O., “Corpus-Based Lexical Choice in Natural Language Generation,” 2000, Proc. ofthe 38th Annual ACL, Hong Kong, pp. 464-471.
Bangalore, S. and Rambow, O., “Exploiting a Probabilistic Hierarchical Model for Generation,” 2000, Proc. of 18thconf. on Computational Linguistics, vol. 1, pp. 42-48.
Bannard, C. and Callison-Burch, C., “Paraphrasing with Bilingual Parallel Corpora,” In Proceedings of the 43rd Annual Meeting on Association for Computational Linguistics (Ann Arbor, MI, Jun. 25-30, 2005). Annual Meeting of the ACL Assoc. for Computational Linguistics, Morristown, NJ, 597-604. DOI=http://dx.doi.org/10.3115/1219840.
Barnett et al., “Knowledge and Natural Language Processing,” Aug. 1990, Communications of the ACM, vol. 33, Issue 8, pp. 50-71.
Baum, Leonard, “An Inequality and Associated Maximization Technique in Statistical Estimation for ProbabilisticFunctions of Markov Processes”, 1972, Inequalities 3:1-8.
Berhe, G. et al., “Modeling Service-based Multimedia Content Adaptation in Pervasive Computing,” CF '04 (Ischia, Italy) Apr. 14-16, 2004, pp. 60-69.
Boitet, C. et al., “Main Research Issues in Building Web Services for Mutualized, Non-Commercial Translation,” Proc. Of the 6th Symposium on Natural Language Processing, Human and Computer Processing of Language and Speech, © 2005, pp. 1-11.
Brants, Thorsten, “TnT—A Statistical Part-of-Speech Tagger,” 2000, Proc. of the 6th Applied Natural LanguageProcessing Conference, Seattle.
Brill, Eric, “Transformation-Based Error-Driven Leaming and Natural Language Processing: A Case Study in Part of Speech Tagging”, 1995, Assocation for Computational Linguistics, vol. 21, No. 4, pp. 1-37.
Brill, Eric. “Transformation-Based Error-Driven Learning and Natural Language Processing: A Case Study in Partof Speech Tagging”,1995, Computational Linguistics, vol. 21, No. 4, pp. 543-565.
Brown et al., “A Statistical Approach to Machine Translation,” Jun. 1990, Computational Linguistics, vol. 16, No. 2, pp. 79-85.
Brown et al., “Word-Sense Disambiguation Using Statistical Methods,” 1991, Proc. of 29th Annual ACL, pp. 264-270.
Brown et al., “The Mathematics of Statistical Machine Translation: Parameter Estimation,” 1993, ComputationalLinguistics, vol. 19, Issue 2, pp. 263-311.
Brown, Ralf, “Automated Dictionary Extraction for “Knowledge-Free” Example-Based Translation,” 1997, Proc. of 7th Int'l Cont. on Theoretical and Methodological Issues in MT, Santa Fe, NM, pp. 111-118.
Callan et al., “TREC and TIPSTER Experiments with INQUERY,” 1994, Information Processing and Management, vol. 31, Issue 3, pp. 327-343.
Callison-Burch, C. et al., “Statistical Machine Translation with Word- and Sentence-aligned Parallel Corpora,” In Proceedings of the 42nd Meeting on Assoc. for Computational Linguistics (Barcelona, Spain, Jul. 21-26, 2004). Annual Meeting of the ACL. Assoc. for Computational Linguistics, Morristown, NJ, 1.
Carl, Michael. “A Constructivist Approach to Machine Translation,” 1998, New Methods of Language Processingand Computational Natural Language Learning, pp. 247-256.
Chen, K. and Chen, H., “Machine Translation: An Integrated Approach,” 1995, Proc. of 6th Int'l Cont. on Theoreticaland Methodological Issue in MT, pp. 287-294.
Cheng, P. et al., “Creating Multilingual Translation Lexicons with Regional Variations Using Web Corpora,” In Proceedings of the 42nd Annual Meeting on Assoc. for Computational Linguistics (Barcelona, Spain, Jul. 21-26, 2004). Annual Meeting of the ACL. Assoc. for Computational Linguistics, Morristown, NJ, 53.
Cheung et al., “Sentence Alignment in Parallel, Comparable, and Quasi-comparable Corpora”, In Proceedings of LREC, 2004, pp. 30-33.
Chinchor, Nancy, “MUC-7 Named Entity Task Definition,” 1997, Version 3.5.
Clarkson, P. and Rosenfeld, R., “Statistical Language Modeling Using the CMU-Cambridge Toolkit”, 1997, Proc. ESCA Eurospeech, Rhodes, Greece, pp. 2707-2710.
Cohen et al., “Spectral Bloom Filters,” SIGMOD 2003, Jun. 9-12, 2003, ACM pp. 241-252.
Cohen, “Hardware-Assisted Algorithm for Full-text Large-Dictionary String Matching Using n-gram Hashing,” 1998, Information Processing and Management, vol. 34, No. 4, pp. 443-464.
Corston-Oliver, Simon, “Beyond String Matching and Cue Phrases: Improving Efficiency and Coverage inDiscourse Analysis”, 1998, The AAAI Spring Symposium on Intelligent Text Summarization, pp. 9-15.
Covington, “An Algorithm to Align Words for Historical Comparison”, Computational Linguistics, 1996, vol. 22, No. 4, pp. 481-496.
Dagan, I. and Itai, A., “Word Sense Disambiguation Using a Second Language Monolingual Corpus”, 1994, Association forComputational Linguistics, vol. 20, No. 4, pp. 563-596.
Dempster et al., “Maximum Likelihood from Incomplete Data via the EM Algorithm”, 1977, Journal of the RoyalStatistical Society, vol. 39, No. 1, pp. 1-38.
Diab, M. and Finch, S., “A Statistical Word-Level Translation Model for Comparable Corpora,” 2000, In Proc.of theConference on Content Based Multimedia Information Access (RIAO).
Diab, Mona, “An Unsupervised Method for Multilingual Word Sense Tagging Using Parallel Corpora: APreliminary Investigation”, 2000, SIGLEX Workshop on Word Senses and Multi-Linguality, pp. 1-9.
Eisner, Jason, “Learning Non-Isomorphic Tree Mappings for Machine Translation,” 2003, in Proc. of the 41st Meeting of the ACL, pp. 205-208.
Elhadad et al., “Floating Constraints in Lexical Choice”, 1996, ACL, vol. 23 No. 2, pp. 195-239.
Elhadad, M. and Robin, J., “An Overview of SURGE: a Reusable Comprehensive Syntactic RealizationComponent,” 1996, Technical Report 96-03, Department of Mathematics and Computer Science, Ben GurionUniversity, Beer Sheva, Israel.
Elhadad, M. and Robin, J., “Controlling Content Realization with Functional Unification Grammars”, 1992, Aspects of Automated Natural Language Generation, Dale et al. (eds)., Springer Verlag, pp. 89-104.
Koehn, P. and Knight, K., “Knowledge Sources for Word-Level Translation Models,” 2001, Conference on EmpiricalMethods in Natural Language Processing.
Kumar, R. and Li, H., “Integer Programming Approach to Printed Circuit Board Assembly Time Optimization,” 1995, IEEE Transactions on Components, Packaging, and Manufacturing, Part B: Advance Packaging, vol. 18, No. 4. pp. 720-727.
Kupiec, Julian, “An Algorithm for Finding Noun Phrase Correspondences in Bilingual Corpora,” In Proceedings of the 31st Annual Meeting of the ACL, 1993, pp. 17-22.
Kurohashi, S. and Nagao, M., “Automatic Detection of Discourse Structure by Checking Surface Information inSentences,” 1994, Proc. of COL-LING '94, vol. 2, pp. 1123-1127.
Langkilde, I. and Knight, K., “Generation that Exploits Corpus-Based Statistical Knowledge,” 1998, Proc. of theCOLING-ACL, pp. 704-710.
Langkilde, I. and Knight, K., “The Practical Value of N-Grams in Generation,” 1998, Proc. of the 9th InternationalNatural Language Generation Workshop, pp. 248-255.
Langkilde, Irene, “Forest-Based Statistical Sentence Generation,” 2000, Proc. of the 1st Conference on NorthAmerican chapter of the ACL, Seattle, WA, pp. 170-177.
Langkilde-Geary, Irene, “A Foundation for General-Purpose Natural Language Generation: SentenceRealization Using Probabilistic Models of Language,” 2002, Ph.D. Thesis, Faculty of the Graduate School, Universityof Southern California.
Langkilde-Geary, Irene, “An Empirical Verification of Coverage and Correctness for a General-PurposeSentence Generator,” 1998, Proc. 2nd Int'l Natural Language Generation Conference.
Llitjos, A. F. et al., “The Translation Correction Tool: English-Spanish User Studies,” Citeseer © 2004, downloaded from: http://gs37.sp.cs.cmu.edu/ari/papers/Irec04/fontll, pp. 1-4.
Mann, G. and Yarowsky, D., “Multipath Translation Lexicon Induction via Bridge Languages,” 2001, Proc. of the2nd Conference of the North American Chapter of the ACL, Pittsburgh, PA, pp. 151-158.
Manning, C. and Schutze, H., “Foundations of Statistical Natural Language Processing,” 2000, The MIT Press, Cambridge, MA [Front Matter].
Marcu, D. and Wong, W., “A Phrase-Based, Joint Probability Model for Statistical Machine Translation,” 2002, Proc.of ACL-2 conference on Empirical Methods in Natural Language Processing, vol. 10, pp. 133-139.
Marcu, Daniel, “Building Up Rhetorical Structure Trees,” 1996, Proc. of the National Conference on ArtificialIntelligence and Innovative Applications of Artificial Intelligence Conference, vol. 2, pp. 1069-1074.
Marcu, Daniel, “Discourse trees are good indicators of importance in text,” 1999, Advances in Automatic TextSummarization, The MIT Press, Cambridge, MA.
Marcu, Daniel, “Instructions for Manually Annotating the Discourse Structures of Texts,” 1999, DiscourseAnnotation, pp. 1-49.
Marcu, Daniel, “The Rhetorical Parsing of Natural Language Texts,” 1997, Proceedings of ACLIEACL '97, pp. 96-103.
Marcu, Daniel, “The Rhetorical Parsing, Summarization, and Generation of Natural Language Texts,” 1997, Ph. D.Thesis, Graduate Department of Computer Science, University of Toronto.
Marcu, Daniel, “Towards a Unified Approach to Memory- and Statistical-Based Machine Translation,” 2001, Proc.of the 39th Annual Meeting of the ACL, pp. 378-385.
McCallum, A. and Li, W., “Early Results for Named Entity Recognition with Conditional Random Fields, Feature Induction and Web-enhanced Lexicons,” In Proceedings of the Seventh Conference on Natural Language Learning at HLT-NAACL, 2003, vol. 4 (Edmonton, Canada), Assoc. for Computational Linguistics, Morristown, NJ, pp. 188-191.
McDevitt, K. et al., “Designing of a Community-based Translation Center,” Technical Report TR-03-30, Computer Science, Virginia Tech, © 2003, pp. 1-8.
Melamed, I. Dan, “A Word-to-Word Model of Translational Equivalence,” 1997, Proc. of the 35th Annual Meeting ofthe ACL, Madrid, Spain, pp. 490-497.
Melamed, I. Dan, “Automatic Evaluation and Uniform Filter Cascades for Inducing N-Best Translation Lexicons,” 1995, Proc. of the 3rd Workshop on Very Large Corpora, Boston, MA, pp. 184-198.
Melamed, I. Dan, “Empirical Methods for Exploiting Parallel Texts,” 2001, MIT Press, Cambridge, MA [table ofcontents].
Meng et al.. “Generating Phonetic Cognates to Handle Named Entities in English-Chinese Cross-LanguageSpoken Document Retrieval,” 2001, IEEE Workshop on Automatic Speech Recognition and Understanding. pp. 311-314.
Metze, F. et al., “The NESPOLE! Speech-to-Speech Translation System,” Proc. of the HLT 2002, 2nd Int'l. Conf. on Human Language Technology (San Francisco, CA), © 2002, pp. 378-383.
Mikheev et al., “Named Entity Recognition without Gazeteers,” 1999, Proc. of European Chapter of the ACL, Bergen, Norway, pp. 1-8.
Miike et al., “A Full-Text Retrieval System with a Dynamic Abstract Generation Function,” 1994, Proceedings of SI-GIR'94, pp. 152-161.
Mohri, M. And Riley, M., “An Efficient Algorithm for the N-Best-Strings Problem,” 2002, Proc. of the 7th Int. Conf. onSpoken Language Processing (ICSLP'02), Denver, CO, pp. 1313-1316.
Mohri, Mehryar, “Regular Approximation of Context Free Grammars Through Transformation”, 2000, pp. 251-261, “Robustness in Language and Speech Technology”, Chapter 9, Kluwer Academic Publishers.
Monasson et al., “Determining Computational Complexity from Characteristic ‘Phase Transitions’,” Jul. 1999, NatureMagazine, vol. 400, pp. 133-137.
Mooney, Raymond, “Comparative Experiments on Disambiguating Word Senses: An Illustration of the Role of Biasin Machine Learning,” 1996, Proc. of the Conference on Empirical Methods in Natural Language Processing, pp. 82-91.
Nagao, K. et al., “Semantic Annotation and Transcoding: Making Web Content More Accessible,” IEEE Multimedia, vol. 8, Issue 2 Apr.-Jun. 2001, pp. 69-81.
Nederhof, M. and Satta, G., “IDL-Expressions: A Formalism for Representing and Parsing Finite Languages inNatural Language Processing,” 2004, Journal of Artificial Intelligence Research, vol. 21, pp. 281-287.
Nieben, S. and Ney, H, “Toward Hierarchical Models for Statistical Machine Translation of Inflected Languages,” 2001, Data-Driven Machine Translation Workshop, Toulouse, France, pp. 47-54.
Norvig, Peter, “Techniques for Automatic Memoization with Applications to Context-Free Parsing”, Compuational Linguistics, 1991, pp. 91-98, vol. 17, No. 1.
Och et al., “Improved Alignment Models for Statistical Machine Translation,” 1999, Proc. of the Joint Conf. ofEmpirical Methods in Natural Language Processing and Very Large Corpora, pp. 20-28.
Och et al. “A Smorgasbord of Features for Statistical Machine Translation.” HLTNAACL Conference. Mar. 2004, 8 pages.
Och, F., “Minimum Error Rate Training in Statistical Machine Translation,” In Proceedings of the 41st Annual Meeting on Assoc. for Computational Linguistics—vol. 1 (Sapporo, Japan, Jul. 7-12, 2003). Annual Meeting of the ACL. Assoc. for Computational Linguistics, Morristown, NJ, 160-167. DOI= http://dx.doi.org/10.3115/1075096.
Och, F. and Ney, H, “Improved Statistical Alignment Models,” 2000, 38th Annual Meeting of the ACL, Hong Kong, pp. 440-447.
Och, F. and Ney, H., “Discriminative Training and Maximum Entropy Models for Statistical Machine Translation,” 2002, Proc. of the 40th Annual Meeting of the ACL, Philadelphia, PA, pp. 295-302.
Och, F. and Ney, H., “A Systematic Comparison of Various Statistical Alignment Models,” Computational Linguistics, 2003, 29:1, 19-51.
Papineni et al., “Bleu: a Method for Automatic Evaluation of Machine Translation,” 2001, IBM Research Report, RC22176(WQ102-022).
Perugini, Saviero et al., “Enhancing Usability in CITIDEL: Multimodal, Multilingual and Interactive Visualization Interfaces,” JCDL '04, Tucson, AZ, Jun. 7-11, 2004, pp. 315-324.
Petrov et al., “Learning Accurate, Compact and Interpretable Tree Annotation,” Jun. 4-9, 2006, in Proc. of the Human Language Technology Conference of the North American Chapter of the ACL, pp. 433-440.
Pla et al., “Tagging and Chunking with Bigrams,” 2000, Proc. of the 18th Conference on Computational Linguistics, vol. 2, pp. 614-620.
Qun, Liu, “A Chinese-English Machine Translation System Based on Micro-Engine Architecture,” An Int'l Conference on Translation and Information Technology, Hong Kong, Dec. 2000, pp. 1-10.
Rapp, Reinhard, Automatic Identification of Word Translations from Unrelated English and German Corpora, 1999, 37th Annual Meeting of the ACL, pp. 519-526.
Rapp, Reinhard, “Identifying Word Translations in Non-Parallel Texts,” 1995, 33rd Annual Meeting of the ACL, pp. 320-322.
Resnik, P. and Smith, A., “The Web as a Parallel Corpus,” Sep. 2003, Computational Linguistics, SpecialIssue on Web as Corpus, vol. 29, Issue 3, pp. 349-380.
Resnik, P. and Yarowsky, D. “A Perspective on Word Sense Disambiguation Methods and Their Evaluation,” 1997, Proceedings of SIGLEX '97, Washington, D.C., pp. 79-86.
Resnik, Philip, “Mining the Web for Bilingual Text,” 1999, 37th Annual Meeting of the ACL, College Park, MD, pp. 527-534.
Rich, E. and Knight, K., “Artificial Intelligence, Second Edition,” 1991, McGraw-Hill Book Company [Front Matter].
Richard et al., “Visiting the Traveling Salesman Problem with Petri nets and application in the glass industry,” Feb. 1996, IEEE Emerging Technologies and Factory Automation, pp. 238-242.
Robin, Jacques, “Revision-Based Generation of Natural Language Summaries Providing Historical Background: Corpus-Based Analysis, Design Implementation and Evaluation,” 1994, Ph.D. Thesis, Columbia University, New York.
Rogati et al., “Resource Selection for Domain-Specific Cross-Lingual IR,” ACM 2004, pp. 154-161.
Zhang, R. et al., “The NiCT-ATR Statistical Machine Translation System for the IWSLT 2006 Evaluation,” submitted to IWSLT, 2006.
Russell, S. and Norvig, P., “Artificial Intelligence: A Modern Approach,” 1995, Prentice-Hall, Inc., New Jersey [Front Matter].
Sang, E. and Buchholz, S., “Introduction to the CoNLL-2000 Shared Task: Chunking,” 2002, Proc. ofCoNLL-2000 and LLL-2000, Lisbon, Portugal, pp. 127-132.
Schmid, H., and Schulte im Walde, S., “Robust German Noun Chunking With a Probabilistic Context-Free Grammar,” 2000, Proc. of the 18th Conference on Computational Linguistics, vol. 2, pp. 726-732.
Schutze, Hinrich, “Automatic Word Sense Discrimination,” 1998, Computational Linguistics, Special Issue on WordSense Disambiguation, vol. 24, Issue 1, pp. 97-123.
Selman et al., “A New Method for Solving Hard Satisfiability Problems,” 1992, Proc. of the 10th National Conferenceon Artificial Intelligence, San Jose, CA, pp. 440-446.
Kumar, S. and Byrne, W., “Minimum Bayes-Risk Decoding for Statistical Machine Translation.” HLTNAACL Conference. Mar. 2004, 8 pages.
Shapiro, Stuart (ed.), “Encyclopedia of Artificial Intelligence, 2nd edition”, vol. D 2,1992, John Wiley & Sons Inc;“Unification” article, K. Knight, pp. 1630-1637.
Sobashima et al., “A Bidirectional Transfer-Driven Machine Translation System for Spoken Dialogues,” 1994, Proc.of 15th Conference on Computational Linguistics, vol. 1, pp. 64-68.
Soricut et al., “Using a Large Monolingual Corpus to Improve Translation Accuracy,” 2002, Lecture Notes In Computer Science, vol. 2499, Proc. of the 5th Conference of the Association for Machine Translation in theAmericas on Machine Translation: From Research to Real Users, pp. 155-164.
Stalls, B. and Knight, K., “Translating Names and Technical Terms in Arabic Text,” 1998, Proc. of the COLING/ACL Workkshop on Computational Approaches to Semitic Language.
Sumita et al., “A Discourse Structure Analyzer for Japanese Text,” 1992, Proc. of the International Conference onFifth Generation Computer Systems, vol. 2, pp. 1133-1140.
Sun et al., “Chinese Named Entity Identification Using Class-based Language Model,” 2002, Proc. of 19thIntemational Conference on Computational Linguistics, Taipei, Taiwan, vol. 1, pp. 1-7.
Tanaka, K. and Iwasaki, H. “Extraction of Lexical Translations from Non-Aligned Corpora,” Proceedings of COLING 1996.
Taskar, B., et al., “A Discriminative Matching Approach to Word Alignment,” In Proceedings of the Conference on Human Language Technology and Empirical Methods in Natural Language Processing (Vancouver, BC, Canada, Oct. 6-8, 2005). Human Language Technology Conference. Assoc. for Computational Linguistics, Morristown, NJ.
Taylor et al., “The Penn Treebank: An Overview,” in A. Abeill (ed.), D Treebanks: Building and Using ParsedCorpora, 2003, pp. 5-22.
Tiedemann, Jorg, “Automatic Construction of Weighted String Similarity Measures,” 1999, In Proceedings ofthe Joint SIGDAT Conference on Emperical Methods in Natural Language Processing and Very Large Corpora.
Tillman, C. and Xia, F., “A Phrase-Based Unigram Model for Statistical Machine Translation,” 2003, Proc. of theNorth American Chapter of the ACL on Human Language Technology, vol. 2, pp. 106-108.
Tillmann et al., “A DP Based Search Using Monotone Alignments in Statistical Translation,” 1997, Proc. of theAnnual Meeting of the ACL, pp. 366-372.
Tomas, J., “Binary Feature Classification for Word Disambiguation in Statistical Machine Translation,” Proceedings of the 2nd Int'l. Workshop on Pattern Recognition, 2002, pp. 1-12.
Uchimoto, K. et al., “Word Translation by Combining Example-Based Methods and Machine Learning Models,” Natural LanguageProcessing (Shizen Gengo Shori), vol. 10, No. 3, Apr. 2003, pp. 87-114.
Uchimoto, K. et al., “Word Translation by Combining Example-based Methods and Machine Learning Models,” Natural LanguageProcessing (Shizen Gengo Shori), vol. 10, No. 3, Apr. 2003, pp. 87-114. (English Translation).
Ueffing et al., “Generation of Word Graphs in Statistical Machine Translation,” 2002, Proc. of Empirical Methods inNatural Language Processing (EMNLP), pp. 156-163.
Varga et al., “Parallel Corpora for Medium Density Languages”, In Proceedings of RANLP 2005, pp. 590-596.
Veale, T. and Way, A., “Gaijin: A Bootstrapping, Template-Driven Approach to Example-Based MT,” 1997, Proc. ofNew Methods in Natural Language Processing (NEMPLP97), Sofia, Bulgaria.
Vogel et al., “The CMU Statistical Machine Translation System,” 2003, Machine Translation Summit IX, New Orleans, LA.
Vogel et al., “The Statistical Translation Module in the Verbmobil System,” 2000, Workshop on Multi-Lingual SpeechCommunication, pp. 69-74.
Vogel, S. and Ney, H., “Construction of a Hierarchical Translation Memory,” 2000, Proc. of Cooling 2000, Saarbrucken, Germany, pp. 1131-1135.
Wang, Y. and Waibel, A., “Decoding Algorithm in Statistical Machine Translation,” 1996, Proc. of the 35th AnnualMeeting of the ACL, pp. 366-372.
Wang, Ye-Yi, “Grammar Inference and Statistical Machine Translation,” 1998, Ph.D Thesis, Carnegie MellonUniversity, Pittsburgh, PA.
Watanabe et al., “Statistical Machine Translation Based on Hierarchical Phrase Alignment,” 2002, 9th InternationalConference on Theoretical and Methodological Issues in Machin Translation (TMI-2002), Keihanna, Japan, pp. 188-198.
Witbrock, M. and Mittal, V., “Ultra-Summarization: A Statistical Approach to Generating Highly Condensed Non-Extractive Summaries,” 1999, Proc. of SIGIR '99, 22nd International Conference on Research and Development inlnformation Retrieval, Berkeley, CA, pp. 315-316.
Wu, Dekai, “A Polynomial-Time Algorithm for Statistical Machine Translation,” 1996, Proc. of 34th Annual Meeting ofthe ACL, pp. 152-158.
Wu, Dekai, “Stochastic Inversion Transduction Grammars and Bilingual Parsing of Parallel Corpora,” 1997, Computational Linguistics, vol. 23, Issue 3, pp. 377-403.
Yamada, K. and Knight, K. “A Syntax-Based Statistical Translation Model,” 2001, Proc. of the 39th AnnualMeeting of the ACL, pp. 523-530.
Yamada, K. and Knight, K., “A Decoder for Syntax-Based Statistical MT,” 2001, Proceedings of the 40th AnnualMeeting of the ACL, pp. 303-310.
Yamada K., “A Syntax-Based Statistical Translation Model,” 2002 PhD Dissertation, pp. 1-141.
Yamamoto et al., “A Comparative Study on Translation Units for Bilingual Lexicon Extraction,” 2001, JapanAcademic Association for Copyright Clearance, Tokyo, Japan.
Yamamoto et al, “Acquisition of Phrase-level Bilingual Correspondence using Dependency Structure” In Proceedings of COLING-2000, pp. 933-939.
Yarowsky, David, “Unsupervised Word Sense Disambiguation Rivaling Supervised Methods,” 1995, 33rd AnnualMeeting of the ACL, pp. 189-196.
Elhadad, Michael, “FUF: the Universal Unifier User Manual Version 5.2”, 1993, Department of Computer Science,Ben Gurion University, Beer Sheva, Israel.
Elhadad, Michael, “Using Argumentation to Control Lexical Choice: A Functional Unification Implementation”,1992, Ph.D. Thesis, Graduate School of Arts and Sciences, Columbia University.
Elhadad, M. and Robin, J., “SURGE: a Comprehensive Plug-in Syntactic Realization Component for TextGeneration”, 1999 (available at http://www.cs.bgu.ac.il/-elhadad/pub.html).
Fleming, Michael et al., “Mixed-Initiative Translation of Web Pages,” AMTA 2000, LNAI 1934, Springer-Verlag, Berlin, Germany, 2000, pp. 25-29.
Och, Franz Josef and Ney, Hermann, “Improved Statistical Alignment Models” ACLOO:Proc. of the 38th Annual Meeting of the Association for Computational Lingustics, ′Online! Oct. 2-6, 2000, pp. 440-447, XP002279144 Hong Kong, China Retrieved from the Internet: <URL:http://www-i6.informatik.rwth-aachen.de/Colleagues/och/ACLOO.ps> retrieved on May 6, 2004! abstract.
Ren, Fuji and Shi, Hongchi, “Parallel Machine Translation: Principles and Practice,” Engineering of Complex Computer Systems, 2001 Proceedings, Seventh IEEE Int'l. Conference, pp. 249-259, 2001.
Fung et al, “Mining Very-Non-Parallel Corpora: Parallel Sentence and Lexicon Extraction via Bootstrapping and EM”, In EMNLP 2004.
Fung, P. and Yee, L., “An IR Approach for Translating New Words from Nonparallel, Comparable Texts”, 1998, 36th Annual Meeting of the ACL, 17th International Conference on Computational Linguistics, pp. 414-420.
Fung, Pascale, “Compiling Bilingual Lexicon Entries From a Non-Parallel English-Chinese Corpus”, 1995, Proc, ofthe Third Workshop on Very Large Corpora, Boston, MA, pp. 173-183.
Gale, W. and Church, K., “A Program for Aligning Sentences in Bilingual Corpora,” 1991, 29th Annual Meeting ofthe ACL, pp. 177-183.
Gale, W. and Church, K., “A Program for Aligning Sentences in Bilingual Corpora,” 1993, Computational Linguisitcs, vol. 19, No. 1, pp. 75-102.
Galley et al., “Scalable Inference and Training of Context-Rich Syntactic Translation Models,” Jul. 2006, in Proc. Of the 21st International Conference on Computational Linguistics, pp. 961-968.
Galley et al., “What's in a translation rule?”, 2004, in Proc. Of HLT/NAACL '04, pp. 1-8.
Gaussier et al, “A Geometric View on Bilingual Lexicon Extraction from Comparable Corpora”, In Proceedings of ACL 2004, July.
Germann et al., “Fast Decoding and Optimal Decoding for Machine Translation”, 2001, Proc. of the 39th AnnualMeeting of the ACL, Toulouse, France, pp. 228-235.
Germann, Ulrich: “Building a Statistical Machine Translation System from Scratch: How Much Bang for theBuck Can We Expect?” Proc. Of the Data-Driven MT Workshop of ACL-01, Toulouse, France, 2001.
Gildea, D., “Loosely Tree-based Alignment for Machine Translation,” In Proceedings of the 41st Annual Meeting on Assoc. for Computational Linguistics—vol. 1 (Sapporo, Japan, Jul. 7-12, 2003). Annual Meeting of the ACL Assoc. for Computational Linguistics, Morristown, NJ, 80-87. DOI=http://dx.doi.org/10.3115/1075096.1075107.
Grefenstette, Gregory, “The World Wide Web as a Resource for Example-Based Machine TranslationTasks”, 1999, Translating and the Computer 21, Proc. of the 21 st International Cant. on Translating and theComputer. London, UK, 12 pp.
Grossi et al, “Suffix Trees and Their Applications in String Algorithms”, In. Proceedings of the 1st South American Workshop on String Processing, Sep. 1993, pp. 57-76.
Gupta et al., “Kelips: Building an Efficient and Stable P2P DHT thorough Increased Memory and Background Overhead,” 2003 IPTPS, LNCS 2735, pp. 160-169.
Habash, Nizar, “The Use of a Structural N-gram Language Model in Generation-Heavy Hybrid Machine Translation,” University of Maryland, Univ. Institute for Advance Computer Studies, Sep. 8, 2004.
Hatzivassiloglou, V. et al., “Unification-Based Glossing”, 1995, Proc. of the International Joint Conference onArtificial Intelligence, pp. 1382-1389.
Huang et al., “Relabeling Syntax Trees to Improve Syntax-Based Machine Translation Quality,” Jun. 4-9, 2006, in Proc. of the Human Language Techology Conference of the North Americna Chapter of the ACL, pp. 240-247.
Ide, N. and Veronis, J., “Introduction to the Special Issue on Word Sense Disambiguation: The State of the Art”, Mar. 1998, Computational Linguistics, vol. 24, Issue 1, pp. 2-40.
Bikel, D., Schwartz, R., and Weischedei, R., “An Algorithm that Learns What's in a Name,” Machine Learning 34, 211-231 (1999).
Imamura et al., “Feedback Cleaning of Machine Translation Rules Using Automatic Evaluation,” 2003 Computational Linguistics, pp. 447-454.
Imamura, Kenji, “Hierarchical Phrase Alignment Harmonized with Parsing”, 2001, in Proc. of NLPRS, Tokyo.
Jelinek, F., “ast Sequential Decoding Algorithm Using a Stack”, Nov. 1969, IBM J. Res. Develop., vol. 13, No. 6, pp. 675-685.
Jones, K. Sparck, “Experiments in Relevance Weighting of Search Terms”, 1979, Information Processing &Management, vol. 15, Pergamon Press Ltd., UK, pp. 133-144.
Klein et al., “Accurate Unlexicalized Parsing,” Jul. 2003, in Proc. of the 41st Annual Meeting of the ACL, pp. 423-430.
Knight et al., “Integrating Knowledge Bases and Statistics in MT,” 1994, Proc. of the Conference of the Associationfor Machine Translation in the Americas.
Knight et al., “Filling Knowledge Gaps in a Broad-Coverage Machine Translation System”, 1995, Proc. ofthe14th International Joint Conference on Artificial Intelligence, Montreal, Canada, vol. 2, pp. 1390-1396.
Knight, K. and Al-Onaizan, Y., “A Primer on Finite-State Software for Natural Language Processing”, 1999 (available at http://www.isLedullicensed-sw/carmel).
Knight, K. and Al-Onaizan, Y., “Translation with Finite-State Devices,” Proceedings of the 4th AMTA Conference, 1998.
Knight, K. and Chander, I., “Automated Postediting of Documents,” 1994, Proc. of the 12th Conference on Artificiallntelligence, pp. 779-784.
Knight, K. and Graehl, J., “Machine Transliteration”, 1997, Proc. of the ACL-97, Madrid, Spain, pp. 128-135.
Knight, K. and Hatzivassiloglou, V., “Two-Level, Many-Paths Generation,” 1995, Proc. of the 33rd AnnualConference of the ACL, pp. 252-260.
Knight, K. and Luk, S., “Building a Large-Scale Knowledge Base for Machine Translation,” 1994, Proc. of the 12thConference on Artificial Intelligence, pp. 773-778.
Knight, K. and Marcu, D., “Statistics-Based Summarization—Step One: Sentence Compression,” 2000, AmericanAssociation for Artificial Intelligence Conference, pp. 703-710.
Knight, K. and Yamada, K., “A Computational Approach to Deciphering Unknown Scripts,” 1999, Proc. of the ACLWorkshop on Unsupervised Learning in Natural Language Processing.
Knight, Kevin, “A Statistical MT Tutorial Workbook,” 1999, JHU Summer Workshop (available at http://www.isLedu/natural-language/mUwkbk.rtf).
Knight, Kevin, “Automating Knowledge Acquisition for Machine Translation,” 1997, AI Magazine, vol. 18, No. 4.
Knight, Kevin, “Connectionist Ideas and Algorithms,” Nov. 1990, Communications of the ACM, vol. 33, No. 11, pp. 59-74.
Knight, Kevin, “Decoding Complexity in Word-Replacement Translation Models”, 1999, Computational Linguistics, vol. 25, No. 4.
Knight, Kevin, “Integrating Knowledge Acquisition and Language Acquisition”, May 1992, Journal of Appliedlntelligence, vol. 1, No. 4.
Knight, Kevin, “Learning Word Meanings by Instruction,” 1996, Proc. of the D National Conference on Artificiallntelligence, vol. 1, pp. 447-454.
Knight, Kevin, “Unification: A Multidisciplinary Survey,” 1989, ACM Computing Surveys, vol. 21, No. 1.
Koehn, Philipp, “Noun Phrase Translation,” A PhD Dissertation for the University of Southern California, pp. xiii, 23, 25-57, 72-81, Dec. 2003.
Koehn, P. and Knight, K., “ChunkMT: Statistical Machine Translation with Richer Linguistic Knowledge,” Apr. 2002, Information Sciences Institution.
Koehn, P. and Knight, K., “Estimating Word Translation Probabilities from Unrelated Monolingual Corpora Usingthe EM Algorithm,” 2000, Proc. of the 17th meeting of the AAAI.
Yossi, Cohen “Interpreter for FUF,” (available at ftp:/lftp.cs.bgu.ac.il/ pUb/people/elhadad/fuf-life.lf) (downloaded Jun. 1, 2008).
Lee, Yue-Shi, “Neural Network Approach to Adaptive Learning: with an Application to Chinese Homophone Disambiguation,” IEEE 2001 pp. 1521-1526.
Lita, L., et al., “tRuEcasIng,” 2003 Proceedings of the 41st Annual Meeting of the Assoc. for Computational Linguistics (in Hinrichs, E. And Roth, D.-editors), pp. 152-159.
Rayner et al., “ Hybrid Language Processing in the Spoken Language Translator,” IEEE 1997, pp. 107-110.
Shirai, S., “A Hybrid Rule and Example-based Method for Machine Translation,” 1997, NTT Communication Science Laboratories, pp. 1-5.
Notice of Allowance mailed Dec. 10, 2013 in Japanese Patent Application 2007-536911, filed Oct. 12, 2005.
Related Publications (1)
Number Date Country
20120323554 A1 Dec 2012 US