The present invention relates to significance evaluation of computer software reuse.
It is important to effectively develop high-quality software within a certain period of time as size and complexity of software increases. In order to achieve this, various software engineering technologies have been proposed. Reuse is the most effective one of them.
Reuse is defined as reuse of existing software components within the same system or another system (e.g., see C. Braun: Reuse, in John J. Marciniak, editor, Encyclopedia of Software Engineering, Vol. 2, John Wiley & Sons, pp. 1055-1069 (1994)). Generally speaking, reuse of software improves productivity and quality, resulting in reduction in costs.
Various methods of evaluating reusability of each software component have been proposed. For example, Etzkorn et al. have proposed a method of quantifying reusability of legacy software components (C++ classes) by calculating various metric values for those components, normalizing them, and adding together the resulting normalized values (see L. H. Etzkorn, W. E. Huges Jr., C. G. Davis: ‘AUTOMATED REUSABILITY QUALITY ANALYSIS OF 00 LEGACY SOFTWARE’, Information and Software Technology, Vol. 43, Issue 5, pp. 295-308 (2001)). On the other hand, Yamamoto et al. have proposed a method of evaluating the reusability of software components, which are programmed with nondisclosed source codes, only using the interface information of those software components (see Yamamoto, Washizaki, Fukazawa: ‘PROPOSAL AND VERIFICATION OF COMPONENT METRICS BASED ON REUSABILITY CHARACTERISTICS’, Foundation of Software Engineering (FOSE2001), (2001)). All of these methods evaluate the reusability of components by calculating the static characteristics thereof. In addition, the validity of the proposed, evaluated values of the reusability is evaluated based on the similarity between the ranking of each evaluated value of multiple component reusability and the corresponding result from an actual programmer subjectively evaluating the reusability.
However, high reusability needs quantitative proof of the components actually being reused within many kinds of software. In other words, subjective determination of high reusability is meaningless unless there are actually reused results. It is thought that, in actuality, there are various components reused within various systems even though the reusability thereof may be evaluated to be low by prior arts.
The objective of the present invention is to provide a system of measuring software reusability based on a certain objective metric.
To achieve the above objective, the present invention provides a significance evaluation system used to reuse software components, which evaluates significance of software components, including: inter-software component relationship extraction means; similarity analysis means for finding similarity among software components and gathering together similar software components into a component group; inter-component group relationship extraction means for finding relationships among component groups from the relationships among software components found by the relationship extraction means and the component groups given by the similarity analysis means; relative significance evaluation means for evaluating relative significance of each component group from the relationships among component groups given by the inter-component group relationship extraction means; and means for transferring a component group evaluated value to a software component belonging to the component group.
The relative significance evaluation means can obtain a relative evaluation value by evaluating so that a frequently used component group or a component group used by a frequently used component group can have a highly evaluated value. In this case, the relative significance evaluation means determines an evaluated value by distributing the evaluated value of a certain component group to all component groups at a distribution ratio d so that a using component group can have a highly evaluated value.
The relative significance evaluation means may distribute to all component groups uniformly the evaluated value of a component group that does not use any component group.
The relative significance evaluation means can obtain an evaluated value by calculating an eigen vector with an eigen value λ=1 for a square matrix D made up of the distribution ratio d as an element.
Another aspect of the present invention is a recording medium, which stores a computer program that instructs a computer system to construct the above-mentioned software component significance evaluation system.
An embodiment of the present invention is described forthwith while referencing the drawings.
The present invention evaluates the significance of software component reuse based on actually used results. The basic concepts of significance evaluation according to the present invention are as follows:
The well-known search engine GOOGLE, which although is in a different field, evaluates the significance of all pages on a reasonable premise that pages with a recursive relationship or pages linked from various other pages can be quality pages.
(Software Components)
To begin with, ‘software components’ to be evaluated in significance and use relationships among them are described using
Typically, a software component means a component which is designed to allow reuse. Particularly, it may mean a component which allows reuse as a black box, which users need not know the content thereof. In this case, a unit to be reused by developers is called a software component or simply a component regardless of type such as a source code file, a binary file, or a document. As shown in
(Similar Component Groups)
Typically, a component set includes many duplicated components or duplicated and partially modified components. Accordingly, similar components are gathered together, categorizing a component set into some component groups. Hereafter, a component group of similar components is simply called a component group.
b) shows component groups each including similar components. Components belonging to corresponding component groups are shown as C1={c1, c′1}, C2={c2, c′2}, C3={c3}, C4={c4}, and C5={c5}.
When a component belonging to a certain component group Ci uses a component belonging to another component group Cj, it is assumed that there is a use relationship between those two component groups.
For example,
To employ the above-described concept, quantitative evaluation of the similarity between two components must be carried out using a metric for evaluating the similarity. To begin with, cluster analysis is carried out based on the similarity to categorize a set of n components into m (0≦m≦n) component groups. The similarity is normalized within a range between 0 and 1. It is assumed that the higher the value, the higher the similarity among components, and that similarity 1 represents the case of the components being completely the same (duplicated components).
The similarity among component groups is determined based on similarity among components. A reference threshold t (0≦t≦1) of similarity is given to categorize components such that the similarity among component groups can become lower than t, and the similarity among components within a component group can become t or greater.
(Relative Significance)
Various methods of evaluating reusability of each component have been proposed. Etzkorn et al. have proposed a method of evaluating reusability of object-oriented software from four viewpoints: modularity, interface size, documentation, and complexity (see L. H. Etzkorn, W. E. Huges Jr., C. G. Davis: ‘AUTOMATED REUSABILITY QUALITY ANALYSIS OF OO LEGACY SOFTWARE’, Information and Software Technology, Vol. 43, Issue 5, pp. 295-308 (2001)). This method uses multiple metrics of reusability obtained by normalizing multiple metric values measured from source codes and then adding together the resulting values, and compares those metrics with the reusability obtained by programmers actually evaluating C++ source codes.
Alternatively, Yamamoto et al. have proposed a method of evaluating reusability of components programmed with nondisclosed source codes based on information of the interface thereof. They have defined the metric of reusability from four viewpoints: understandability, usability, testability, and portability, and have compared that metric with the result of programmers actually implementing an application on a JavaBeans basis (see Yamamoto, Washizaki, Fukazawa: ‘PROPOSAL AND VERIFICATION OF COMPONENT METRICS BASED ON REUSABILITY CHARACTERISTICS’, Foundation of Software Engineering (FOSE2001), (2001)).
All of those methods evaluate the reusability of components by calculating the static characteristics thereof such as structures or interfaces.
In contrast, the present invention evaluates the reusability of components based on the actual results of using them. The significance of reusability is called ‘relative significance’ as distinguished from the reusability determined based on the static characteristics of among numerous components.
A case of a software developer developing new software reusing existing software components is assumed. Typically, a developer reuses existing software components, which are determined as having high reusability for software to be developed by the developer. Here, reuse of a component by a developer is assumed to give a ‘high reusability’ supporting vote to that component. When software development by reusing components is repeated many times, components with high reusability are frequently reused, resulting in increase in the number of supporting votes. On the other hand, components with low reusability are less frequently reused, resulting in low supporting votes. In this case, it is thought that software components have respective reusability evaluated values corresponding to the acquired number of votes. Therefore, the following Equation holds true.
(Component evaluated value)=Number of votes to component)
In this case, not only simply counting the acquired number of votes to a component, but weighting the votes based on what type of component has reused that component. A valuable component which is used by many other components (or a component which is reused by a developer of a valuable component) is regarded as a high significance component for reusing, and a greater weight is assigned to a case of being voted from a high significance component than a case of being voted from a low significance component.
In addition, the number of components reused by a certain component is also considered. Reuse of many components by a certain component A decreases the proportion of the function of each reused component to A's function, resulting in dispersion of lowered significance. Therefore, when a certain component gives votes to multiple components, weights of votes should be distributed to the respective reused components in a certain distribution ratio, and the following Equation holds true.
(Weight of vote)=(Vote source evaluated value)×(vote destination distribution ratio)
In this way, evaluation which is determined by components in a component set evaluating and giving votes on each other's significance is called ‘relative significance’, and the total sum of the weights of votes obtained by respective components is called ‘value of relative significance’.
In the case of developing Software by repetitively reusing components, since newly developed software will have accumulated, the number of components in a component set will increase, and reuse relationships will change. Since the value of relative significance is calculated from reuse relationships in a component set, when the number of components in a component set or the reuse relationship changes, the evaluated values before and after the change cannot be compared. To solve this problem, attention is directed to the ranks of components based on the evaluated values rather than the evaluated values themselves. This facilitates understanding of how the relative significance of a component has changed, by observing change in the rank of the component before and after the number of the components in a component set or reuse relationship has changed.
As described above while referencing
The above-mentioned distribution of the evaluated values is described while referencing
(Categorization of Components)
It is assumed that there are n components to be evaluated and that c1, c2, . . . , cn denote them, respectively. There are directional relationships among components. For example, the relationship from a component ci to a component cj is represented by r (ci, cj), where
r(ci, cj)=if (ci uses cj),
then true;
else false.
The similarity between components is represented by s(ci, cj). Here, the similarity is normalized within the range of 0≦s(ci, cj)≦1.
A set of all components to be evaluated is represented by C={c1, c2, . . . , cn}. The similarity between component sets is determined based on similarity s between components. For example, the similarity between component sets Ci and Cj is represented by S(Ci, Cj). Here, the similarity is normalized within the range of 0≦S(Ci, Cj)≦1.
Definition 1: Assuming that the threshold of the similarity, which is a reference for categorization, is t (0≦t≦1), subsets C1, C2, . . . , Cm of component set C divided so as to satisfy the following conditions are called similar component groups.
Definition 2: Assuming that ciεCi, cjεCj, and if there is a use relationship from a certain ci to a certain cj, it is assumed that there is a use relationship from Ci to Cj. In other words,
R(Ci, Cj)=if (∃ci, cj)|r(ci, cj),
then true;
else false.
(Definition of Relative Significance Evaluation)
Each component group has a value of relative significance, and vi denotes the value of relative significance of the component group Ci. In addition, wij denotes the weight of the use relationship from Ci to Cj.
Definition 3: A value of relative significance of the component group Ci is the total sum of weights wji of the use relationships to the component group Ci.
A weight distribution ratio from the component group Ci to the component group Cj is denoted as dij.
Definition 4: Weight wij of the use relationship from the component group Ci to the component group Cj is a value where the value of relative significance of Ci is distributed in the distribution ratio dij.
wij=vidij (4)
Definition 5: A value of relative significance of the component group Ci is distributed to all component groups Cj (1≦j≦m).
Definition 6: Distribution ratio to using component groups is higher than that to non-using component groups. In other words, if R(Ci, Cj)=true, and R(Ci, Ck)=false, then
dij>dik (6)
(Corrections)
Since application of the above-defined values of relative significance to actual software components causes some problems, a few corrections must be made. Those problems and corresponding countermeasures are described forthwith.
(Evaluation of Components that do not Use Other Components)
Typically, there is a component which has been developed using no other components in software development.
When a certain component group Ci does not use any other component, no component group receives a vote from Ci. In other words, no evaluated value can be distributed to all component groups, and assuming that di0, di1, di2, . . . , dim are all 0, Definition 5 is not satisfied. Consequently, when no component receives a vote, this is interpreted as a vote with an evaluation of ‘very low significance’ having been given to all component groups.
Correction 1: If a component group Ci does not reuse any component group, for all j,
(Case of Evaluation Results not Circulated Throughout the Entirety)
This case is described while referencing
Correction 2: Evaluated values p (0<p<1) of component groups are distributed to only used component groups, and the remaining values (1−p) are distributed to all component groups. Assuming that dij denotes the original distribution ratio, and d′ij denotes the corrected distribution ratio, the distribution ratio is corrected as follows:
(Evaluated Value Calculation Method)
This section describes calculation of a value of relative significance resulting in calculation of an eigen vector of a distribution ratio matrix.
The following Equation (9) holds true according to Definitions 3 and 4.
Evaluated values of all component groups can be determined by solving this Equation (9) for all vi(i=1, 2, . . . , m).
In other words, the following m simultaneous equations should be solved.
The above is represented in a matrix syntax.
Assume that V denotes an m-dimensional column vector which represents evaluated values of m component groups.
V=(v1, v2, . . . , Vn)t, where superscript t denotes transposition.
In addition, D denotes an m×m matrix which represents distribution ratio from Ci to Cj.
With this, simultaneous equations (10) are represented by
V=DtV (11)
A vector V which satisfies Equation (11) is an eigen vector for an eigen value λ=1 for matrix Dt.
As a result, calculation of the eigen vector for the distribution ratio matrix allows provision of a value of relative significance.
(Significance Evaluation System)
A system according to the present invention is described as a relative significance evaluation system for JAVA source codes based on the above-mentioned significance evaluation model. Table 1 shows the correspondence between the model and JAVA(T) concept when applying the above-mentioned method (RSR method) to JAVA(T).
JAVA(T) is an object-oriented language, which allows easy reuse by class. In addition, only one class is described for a single source code file as a rule. Moreover, the RSR method is applied, assuming a JAVA source code file to be a unit of component. Inheritance of classes, implementation of abstract classes and interfaces, and calling of methods are regarded as use relationships. In addition, the similarity proposed in Patent Application No. 2002-015135 and ‘INVESTIGATION OF SIMILARITY AMONG SOFTWARE SYSTEMS USING A CLONE DETECTION TOOL’ (Institute of Electronics, Information, and Communication Engineers Research Report vol. 101 No. 240, Jul. 30, 2001) is used as a metric for evaluating the similarity among components. This is a method of measuring similarity from the ratio of the number of identical lines between two source code files. A system ‘similarity metrics measuring tool’(SMMT), which measures similarity from source code files, has been developed (see Patent Application No. 2002-015135). The SMMT is used in this system to calculate the similarity.
(System Configuration)
Inter-file relationship extraction (S212): Analyzes JAVA source code files 230, and extracts inter-class inheritance, implementation of abstract classes and interfaces, and calling of methods as reuse relationships.
An example of actually applying the above-mentioned relative significance evaluation system to JAVA source code is given below. In this case, JDK-1.3.0 is selected as an evaluation target. As adjustment parameters, the threshold for categorization in cluster analysis described in Definition 1 is s=0.80, and the proportion of the weights of votes described in Correction 2 is p=0.85.
The JDK is a JAVA(T) standard package, which is needed to develop application in JAVA(T). In
The lowest ranking is the 1256th, and there are 622 classes placed therein. Those classes are not reused by any class.
As described above, the relative significance evaluation system calculates the evaluated values which reflect significance of actual reuse.
The software component significance evaluation system according to the present invention allows extraction of actually frequently reused components even though they may be evaluated as having low reusability by the prior art, thereby allowing comprehension of really valuable, highly reusable components, which can be used for actual software development.
Number | Date | Country | Kind |
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2002-040728 | Feb 2002 | JP | national |
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PCT/JP02/10274 | 10/2/2002 | WO | 00 | 2/9/2005 |
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WO03/069466 | 8/21/2003 | WO | A |
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