4.7 Article

Ensemble of feature sets and classification algorithms for sentiment classification

Journal

INFORMATION SCIENCES
Volume 181, Issue 6, Pages 1138-1152

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.ins.2010.11.023

Keywords

Sentiment classification; Text classification; Ensemble learning; Classifier combination; Comparative study

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In this paper, we make a comparative study of the effectiveness of ensemble technique for sentiment classification. The ensemble framework is applied to sentiment classification tasks, with the aim of efficiently integrating different feature sets and classification algorithms to synthesize a more accurate classification procedure. First, two types of feature sets are designed for sentiment classification, namely the part-of-speech based feature sets and the word-relation based feature sets. Second, three well-known text classification algorithms, namely naive Bayes, maximum entropy and support vector machines, are employed as base-classifiers for each of the feature sets. Third, three types of ensemble methods, namely the fixed combination, weighted combination and meta-classifier combination, are evaluated for three ensemble strategies. A wide range of comparative experiments are conducted on five widely-used datasets in sentiment classification. Finally, some in-depth discussion is presented and conclusions are drawn about the effectiveness of ensemble technique for sentiment classification. (C) 2010 Elsevier Inc. All rights reserved.

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