Multi-level structured models for document-level sentiment classification
- Creators
- Yessenalina, Ainur
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Yue, Yisong
- Cardie, Claire
Abstract
In this paper, we investigate structured models for document-level sentiment classification. When predicting the sentiment of a subjective document (e.g., as positive or negative), it is well known that not all sentences are equally discriminative or informative. But identifying the useful sentences automatically is itself a difficult learning problem. This paper proposes a joint two-level approach for document-level sentiment classification that simultaneously extracts useful (i.e., subjective) sentences and predicts document-level sentiment based on the extracted sentences. Unlike previous joint learning methods for the task, our approach (1) does not rely on gold standard sentence-level subjectivity annotations (which may be expensive to obtain), and (2) optimizes directly for document-level performance. Empirical evaluations on movie reviews and U.S. Congressional floor debates show improved performance over previous approaches.
Additional Information
© 2010 Association for Computational Linguistics. This work was supported in part by National Science Foundation Grants BCS-0904822, BCS-0624277, IIS- 0535099; by a gift from Google; and by the Department of Homeland Security under ONR Grant N0014-07-1- 0152. The second author was also supported in part by a Microsoft Research Graduate Fellowship. The authors thank Yejin Choi, Thorsten Joachims, Nikos Karampatziakis, Lillian Lee, Chun-Nam Yu, and the anonymous reviewers for their helpful comments.Additional details
- Eprint ID
- 49550
- Resolver ID
- CaltechAUTHORS:20140910-132610594
- NSF
- BCS-0904822
- NSF
- BCS-0624277
- NSF
- IIS-0535099
- Office of Naval Research (ONR)
- N0014-07-1-0152
- Department of Homeland Security
- Created
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2014-09-10Created from EPrint's datestamp field
- Updated
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2020-03-09Created from EPrint's last_modified field