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Word Polarity Disambiguation Using Bayesian Model and Opinion-Level Features

Xia, Yunqing; Cambria, Erik; Hussain, Amir; Zhao, Huan

Authors

Yunqing Xia

Erik Cambria

Huan Zhao



Abstract

Contextual polarity ambiguity is an important problem in sentiment analysis. Many opinion keywords carry varying polarities in different contexts, posing huge challenges for sentiment analysis research. Previous work on contextual polarity disambiguation makes use of term-level context, such as words and patterns, and resolves the polarity with a range of rule-based, statistics-based or machine learning methods. The major shortcoming of these methods lies in that the term-level features sometimes are ineffective in resolving the polarity. In this work, opinion-level context is explored, in which intra-opinion features and inter-opinion features are finely defined. To enable effective use of opinion-level features, the Bayesian model is adopted to resolve the polarity in a probabilistic manner. Experiments with the Opinmine corpus demonstrate that opinion-level features can make a significant contribution in word polarity disambiguation in four domains.

Citation

Xia, Y., Cambria, E., Hussain, A., & Zhao, H. (2015). Word Polarity Disambiguation Using Bayesian Model and Opinion-Level Features. Cognitive Computation, 7(3), 369-380. https://doi.org/10.1007/s12559-014-9298-4

Journal Article Type Article
Acceptance Date Jul 17, 2014
Online Publication Date Aug 2, 2014
Publication Date 2015-06
Deposit Date Sep 27, 2019
Journal Cognitive Computation
Print ISSN 1866-9956
Electronic ISSN 1866-9964
Publisher BMC
Peer Reviewed Peer Reviewed
Volume 7
Issue 3
Pages 369-380
DOI https://doi.org/10.1007/s12559-014-9298-4
Keywords Sentiment disambiguation; Bayesian model; Sentiment analysis; Opinion-level features
Public URL http://researchrepository.napier.ac.uk/Output/1792987