DocumentCode
3348773
Title
Customer Reviews for Individual Product Feature-based Ranking
Author
Kong, Rui ; Wang, Yonggang ; Xin, Wei ; Yang, Tao ; Hu, Jianbin ; Chen, Zhong
Author_Institution
MoE Key Lab. of High Confidence Software Technol., Peking Univ., Beijing, China
fYear
2011
fDate
21-23 Oct. 2011
Firstpage
449
Lastpage
453
Abstract
As the number of products being sold online increases, it is becoming increasingly difficult for customers to make purchasing decisions based on only pictures and short product descriptions. Thus, customer reviews, particularly the text describing the features, comparisons and experiences of using a particular product provide a rich source of information to compare products and make purchasing decisions. Especially, all kinds of reviews from various people have different degree of impact on a buyer, that is, we tend to believe our friends who always make right decisions than others. In this paper, we present an individual feature-based product ranking technique that mines thousands of customer reviews. By grouping users into unfamiliar users and familiar users according to the fact whether the client has almost always right ideas as far as one has concerned we attach different weights to them based on the friend ranking list. Friends on the top of the list are expected to be more reliable than the rest. After founding the client´s friend set{Fj, Sk}, we extract crucial information from users´ reviews. By realizing key words in a sentence, we classify comments into 4 representative sentences-Active Direct sentence(AD), Inactive Direct sentence(ID), Active Indirect sentence(AI), and Inactive Indirect sentence(II). Afterwards, we construct a weighted graph considering the product weight itself and the edge between every 2 relevant products, using ratios AD/ID and ID/II. The last step is that the client ranks search result with the average reliabilities of himself with respect to reviews of specific feature. Through calculation, we have a weighted score list, helping the client make purchase intentions.
Keywords
Internet; customer services; purchasing; retail data processing; text analysis; AD-ID; ID-II; active direct sentence; active indirect sentence; client friend set; customer review; feature describing text; friend ranking list; inactive direct sentence; inactive indirect sentence; individual product feature-based ranking; online product selling; purchasing decision; short product description; weighted graph; Artificial intelligence; Data mining; Feature extraction; Joining processes; Reliability engineering; Tagging; feature; individual; ranking; review; scheme;
fLanguage
English
Publisher
ieee
Conference_Titel
Instrumentation, Measurement, Computer, Communication and Control, 2011 First International Conference on
Conference_Location
Beijing
Print_ISBN
978-0-7695-4519-6
Type
conf
DOI
10.1109/IMCCC.2011.118
Filename
6154143
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