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Most Influential SIGIR 2011 Paper · 2026-03 edition

ILDA: Interdependent LDA Model For Learning Latent Aspects And Their Ratings From Online Product Reviews

Samaneh Moghaddam; Martin Ester

Venue
ACM SIGIR Conference (SIGIR) 2011
Recognition
Most Influential SIGIR 2011 Paper (Rank No. 10)
Edition
2026-03
Impact factor
5
Certificate ID
5950b8b93e447db3

Abstract

Today, more and more product reviews become available on the Internet, e.g., product review forums, discussion groups, and Blogs. However, it is almost impossible for a customer to read all of the different and possibly even contradictory opinions and make an informed decision. Therefore, mining online reviews (opinion mining) has emerged as an interesting new research direction. Extracting aspects and the corresponding ratings is an important challenge in opinion mining. An <i>aspect</i> is an attribute or component of a product, e.g. 'screen' for a digital camera. It is common that reviewers use different words to describe an aspect (e.g. 'LCD', 'display', 'screen'). A <i>rating</i> is an intended interpretation of the user satisfaction in terms of numerical values. Reviewers usually express the rating of an aspect by a set of sentiments, e.g. 'blurry screen'. In this paper we present three probabilistic graphical models which aim to extract aspects and corresponding ratings of products from online reviews. The first two models extend standard PLSI and LDA to generate a rated aspect summary of product reviews. As our main contribution, we introduce <i>Interdependent Latent Dirichlet Allocation (ILDA)</i> model. This model is more natural for our task since the underlying probabilistic assumptions (interdependency between aspects and ratings) are appropriate for our problem domain. We conduct experiments on a real life dataset, Epinions.com, demonstrating the improved effectiveness of the <i>ILDA</i> model in terms of the likelihood of a held-out test set, and the accuracy of aspects and aspect ratings.

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