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http://dx.doi.org/10.14695/KJSOS.2014.17.1.71

A Rating Inference of Movie Reviews Using Sentiment Patterns  

Kim, Jung-Ho (Department of Computer Engineering, Korea Aerospace University)
In, Joo-Ho (Department of Computer Engineering, Korea Aerospace University)
Chae, Soo-Hoan (The School of Electronics and Telecommunication, Korea Aerospace University)
Publication Information
Science of Emotion and Sensibility / v.17, no.1, 2014 , pp. 71-78 More about this Journal
Abstract
We propose the sentiment pattern as a novel sentiment feature for more accurate text sentiment analysis, and introduce the rating inference of movie reviews using it. The text sentiment analysis is a task that recognizes and classifies sentiment of text whether it is positive or negative. For that purpose, the sentiment feature is used, which includes sentiment words and phrase pattern that have specific sentiment like positive or negative. The previous researches for the sentiment analysis, however, have a limit to understand accurately total sentiment of either a sentence or text because they consider the sentiment of sentiment words and phrase patterns independently. Therefore, we propose the sentiment pattern that is defined by arranging semantically all sentiment in a sentence, and use them as a new sentiment feature for the rating inference that is one of the detail subjects of the sentiment analysis. In order to verify the effect of proposed sentiment pattern, we conducted experiments of rating inference. Ratings of test reviews is inferred by using a probabilistic method with sentiment features including sentiment patterns extracted from training reviews. As a result, it is shown that the result of rating inference with sentiment patterns are more accurate than that without sentiment patterns.
Keywords
sentiment analysis; rating inference; sentiment feature; sentiment word; phrase pattern; sentiment pattern;
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