This disclosure relates to computer methods and systems for online reviews and more particularly to computer methods and systems for an adaptive social media scoring model where social media reviews are adapted to align with the readers of the reviews.
The usefulness of online reviews for products and services continues to be a problem for individual readers of reviews. Individual consumers have access to a surplus of online product information, often without a reliable way to authenticate and otherwise judge the information's usefulness. In particular, the availability of online reviews for products and services presents consumers with a substantial amount of information that at times provides minimal assistance to consumers despite its significant potential to benefit purchase decisions.
Disclosed is an adaptive influence process where a product review score is generated from a collection of modified review scores reflecting the consumer's confidence, trust, alignment and/or other affinity with the authors of the reviews. In other words, the consumer's alignment to the reviewer can be leveraged to assist in determining the review's usefulness to the consumer. For example, reviews retrieved from social media network members linked to the consumer can be modified to reflect the consumer's alignment with the reviewer. Modified review scores can combine to produce a product review score to assist the consumer in making purchase decisions. This process is further responsive to consumer feedback for determining a measure of alignment between consumer and reviewer for adapting the influence of reviewers.
This summary is provided to introduce a simplified description of an adaptive influence process and is not to be understood as limiting the scope of the claimed subject matter. Other aspects, advantages, and novel features of the disclosure will become apparent from the detailed description and figures contained hereafter.
In one aspect there is provided a computer-implemented method of scoring reviews obtained from at least one reviewer in relation to a product and/or service of interest to a user. The method comprises; for each particular reviewer, retrieving using a computer at least one influence score for modifying the review of the particular reviewer, the at least one influence score responsive to a measure of alignment between the user and of the particular reviewer, the at least one influence score maintained in a database communicatively coupled to the computer; modifying individual reviews using the respective influence scores of the reviewers from the database for presentation to the user; and receiving, at the computer, feedback from the user regarding the individual reviews and adjusting the measure of alignment in response to the feedback to adaptively adjust the at least one influence score for a particular reviewer, storing to the database the at least one influence score as adapted.
Each influence score may be responsive to one or more measures received at the computer, the one or more measures including respective measures of reviewer credibility determined by the user; reviewer credibility determined by a social network associated with the user: reviewer formal education with respect to the product and/or service; and reviewer practical experience with respect to the product and/or service.
At least one influence score may comprise a global influence score for each reviewer and a specific influence score for each reviewer where the specific influence score is responsive to the product and/or service. If the specific influence score is available, the specific influence score may be used when modifying individual reviews.
The method may comprise receiving the reviews at the computer in response to a user request for reviews of the product and/or service from the reviewers. Reviewers and user may be members of a same one or more social networks and the request and reviews may be communicated via the same one or more social networks to the computer.
The feedback may comprise a user review from the user of the product and/or service and the step of adjusting comprises determining an alignment between the user review and the respective review of each particular reviewer. The feedback may comprise measures of user agreement with each of the individual reviews.
The method may comprise generating a final score to be presented to the user based on an aggregation and averaging of the individual reviews as modified.
In another aspect there is provided a computer-implemented method of searching a social media network for reviews from reviewers concerning a topic of interest to a user. The method may comprise determining using a computer the reviewers for the user from the social media network; communicating requests for respective reviews from the reviewers concerning the topic of interest; receiving respective reviews from the reviewers; for each particular reviewer, retrieving using the computer at least one influence score for modifying the review of the particular reviewer, the at least one influence score responsive to a measure of alignment between the user and the particular reviewer, the at least one influence score maintained in a database communicatively coupled to the computer; modifying individual respective review's using the respective influence scores of the reviewers from the database for presentation to the user; receiving, at the computer, feedback from the user regarding the respective individual reviews; and adjusting the measure of alignment for the particular reviewer in response to the feedback to adaptively adjust the at least one influence score for the particular reviewer, storing to the database the at least one influence score as adapted.
Computer system, computer program (e.g. a non-transitory computer medium storing instructions for configuring a computer system) as well as other aspects will also be apparent.
Reviewers known to the consumer can assist purchase decisions as the consumer may be better positioned to determine the usefulness of reviews where a relationship with the reviewer has been previously established. Social media networks represent one source of contacts, potentially providing a large pool of reviewers with whom the consumer may have pre-existing familiarity. Social media also supports creating and collecting reviews in real time, reflecting current opinions of products or services or other topics of interest. Some online providers of products and services provide repositories of online reviews that are stale and may not reflect up to date opinions.
A consumer's alignment to a reviewer may represent several factors including but not limited to, the consumer's trust in the reviewer, the reviewer's overall credibility and the reviewer's education and expertise in relation to the product or service under review. From another perspective. consumer alignment can be taken to reflect the reviewer's influence over the consumer. For example, when a reviewer has an education or job relating to computers and a consumer wishes to purchase a computer product, this particular reviewer may exercise greater influence over the purchase decision—consumers will tend to have greater confidence in reviewers with backgrounds in computers when making computer purchases.
Education and expertise represent some factors that may influence a consumer's purchase decision. Other factors to consider may include for example, the degree of trust or other affinity the consumer places in the reviewer. While education and expertise may present a reviewer in a positive light, other issues such as, biased opinions that question the reviewer's credibility may alert the consumer to proceed cautiously.
A review may be adapted to reflect a particular reviewer's influence over the consumer. Reviewer influence as previously discussed may represent several factors allowing consumers to adjust those factors per their affinities to the reviewer. Accordingly, a consumer may submit their own review or other form of feedback for comparison against other reviews, establishing an alignment with reviewers. Comparing reviews can this provide a baseline for determining how closely reviewer and consumer align. Where for example the consumer and reviewer provide very similar or identical reviews, the consumer's confidence and/or alignment with the reviewer may increase, reflecting their similar perspectives. As such, the reviewer's influence may adapt to reflect the consumer's increased confidence for subsequent reviews. It should be understood however, that this is one example of many possible methods for adjusting the reviewer's influence over the consumer.
As one may expect, a consumer's affinity towards a particular reviewer is not static and may change over time. Accordingly, alignment between consumer and reviewer may adapt and change over time. Any number of factors contributing to a consumer's affinity with a reviewer can change and effect their alignment. For example, a vegetarian consumer may be more aligned with reviewers with similar dietary habits and less aligned with reviewers with non-vegetarian habits. However, if the vegetarian consumer changes their dietary habits such that their diet now includes meat, their alignment with non-vegetarian reviewers may increase while their alignment with vegetarians may decrease.
The computers (e.g. 102, 110, 120 and 130) depicted in
Computer server 140 as depicted in
Referring still to
Computer server 140 receives each of review one 112, review two 122, review three 132 and product review request 104 over network 106. As explained in further detail below and depicted in
Influence scores can reflect any number of traits representative of a reviewer's influence with a consumer. Influence scores can be interchangeably viewed from the perspective of the consumer to represent trust, confidence or other affinities placed in the reviewer by the consumer. Global influence scores represent the overall influence established between reviewer and consumer; in other words, how much influence generally the reviewer has over the consumer. Specific influence scores however only represent influence established between consumer and reviewer within the context of a specific product and/or service. That is specific influence scores may be responsive to the product and/or service of product review request 104, where general influence scores may be less responsive. If for example product review request 104 relates to the purchase of to new computer and the individual reviewer has certification as a IT specialist, the specific influence score for this individual reviewer may be, at least initially, responsive to or weighted more heavily than other scores taking into account this qualification. Using the adaptive process, over time, the alignment of consumer and reviewer as determined from consumer feedback to the individual reviewer's reviews for this context or topic (e.g. IT) may modify the specific influence score, which may result in it increasing or decreasing the influence score.
Computer server 140 computes product review score 252 by inputting influence and review scores in to review score modifier 250. As depicted in
Computer server 140 may prefer one influence score over another when computing product review score 252. Referring to
Alignment modification 310 receives review scores as inputs in computing alignment scores for further use in adapting influence scores. As depicted in
Alignment scores 312, 314 and 316 operate to adapt—or possibly establish—influence scores. As depicted in
Considering the example depicted in
Although this description presents a more detailed review of an adaptive influence process with reference to specific features and process steps, it should not be understood as limiting the scope of the claimed subject matter. In other words, the subject matter defined in the claims is not necessarily limited to the features described in the specification, rather the specification discloses examples for implementing the claims.
This application claims the benefit of U.S. Provisional Application No. 61/933,465 filed Jan. 30, 2014, the contents of which are incorporated herein by reference.
Number | Date | Country | |
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61933465 | Jan 2014 | US |