Journal of Natural Language Processing
Online ISSN : 2185-8314
Print ISSN : 1340-7619
ISSN-L : 1340-7619
Paper
Collective Sentiment Classification Based on User Leniency and Product Popularity
Wenliang GaoNobuhiro KajiNaoki YoshinagaMasaru Kitsuregawa
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JOURNAL FREE ACCESS

2014 Volume 21 Issue 3 Pages 541-561

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Abstract
We propose a method of collective sentiment classification that assumes dependencies among labels of an input set of reviews. The key observation behind our method is that the distribution of polarity labels over reviews written by each user or written on each product is often skewed in the real world; intolerant users tend to report complaints while popular products are likely to receive praise. We encode these characteristics of users and products (referred to as user leniency and product popularity) by introducing global features in supervised learning. To resolve dependencies among labels of a given set of reviews, we explore two approximated decoding algorithms, “easiest-first decoding” and “two-stage decoding.” Experimental results on real-world datasets with user and/or product information confirm that our method contributed greatly to classification accuracy.
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© 2014 The Association for Natural Language Processing
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