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Title:      PERSONALIZED SUMMARIZATION OF CUSTOMER REVIEWS BASED ON USER’S BROWSING HISTORY
Author(s):      Zehra Kavaso?lu, ?ule Gündüz Ö?üdücü
ISBN:      978-972-8939-93-9
Editors:      António Palma dos Reis and Ajith P. Abraham
Year:      2013
Edition:      Single
Keywords:      Review Mining, Personalization, FBS
Type:      Full Paper
First Page:      21
Last Page:      28
Language:      English
Cover:      cover          
Full Contents:      click to dowload Download
Paper Abstract:      Every e-commerce web site today has the product review feature which allows customers to express their opinions and comments about the product they have purchased. These comments are important for potential customers when deciding which product to buy. However, reading large amounts of customer reviews available for each product is a time consuming process. For this reason, customers usually tend to read small pieces of topmost comments and skip the rest of them. Also, depending on personal preferences and needs, customers might be interested in different features of various products. Therefore, a feature based summarization of the products is very helpful for potential customers in selecting the best product option. Existing feature based review summarization methods create a product summary for a common user profile ignoring the individual preferences. In this paper, we propose a novel feature based approach for personalized review summarization by giving importance to potential individual customer preferences. In order to evaluate our method, a dataset has been collected from a popular Turkish e-commerce web site. The experimental results show that our method is successful in finding and summarizing the most relevant reviews for the active user.
   

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