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Journal Article
Exploring the Characteristics of Opinion Expressions for Political Opinion Classification
Proceedings of the 9th Annual International Conference on Digital Government Research. Montreal, Canada. Digital Government Society of North America
Author(s)
Recently there has been increasing interest in constructing general-purpose political opinion classifiers for applications in e-Rulemaking. This problem is generally modeled as a sentiment classification task in a new domain. However, the classification accuracy is not as good as that in other domains such as customer reviews. In this paper, we report the results of a series of experiments designed to explore the characteristics of political opinion expression which might affect the sentiment classification performance. We found that the average sentiment level of Congressional debate is higher than that of neutral news articles, but lower than that of movie reviews. Also unlike the adjective-centered sentiment expression in movie reviews, the choice of topics, as reflected in nouns, serves as an important mode of political opinion expression. Manual annotation results demonstrate that a significant number of political opinions are expressed in neutral tones. These characteristics suggest that recognizing the sentiment is not enough for political opinion classification. Instead, what seems to be needed is a more fine-grained model of individuals' ideological positions and the different ways in which those positions manifest themselves in political discourse.
Date Published:
2008
Citations:
Yu, Bei, Daniel Diermeier, Stefan Kaufmann. 2008. Exploring the Characteristics of Opinion Expressions for Political Opinion Classification. Proceedings of the 9th Annual International Conference on Digital Government Research. Montreal, Canada. Digital Government Society of North America. 82-91.