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A Feature Selection Method Based on Fisher’s Discriminant Ratio for Text Sentiment Classification
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A Feature Selection Method Based on Fisher’s Discriminant Ratio for Text Sentiment Classification
Suge Wang19, 21, Deyu Li20, 21, Yingjie Wei22 and Hongxia Li19
| (19) |
School of Mathematics Science, Shanxi University, Taiyuan, 030006, China |
| (20) |
School of Computer & Information Technology, Shanxi University, Taiyuan, 030006, China |
| (21) |
Key Laboratory of Computational Intelligence and Chinese Information Processing of Ministry of Education, Shanxi University, Taiyuan, 030006, China |
| (22) |
Science Press, Beijing, 100717, China |
Abstract
With the rapid growth of e-commerce, product reviews on the Web have become an important information source for customers’
decision making when they intend to buy some product. As the reviews are often too many for customers to go through, how to
automatically classify them into different sentiment orientation categories (i.e. positive/negative) has become a research
problem. In this paper, based on Fisher’s discriminant ratio, an effective feature selection method is proposed for product
review text sentiment classification. In order to validate the validity of the proposed method, we compared it with other
methods respectively based on information gain and mutual information while support vector machine is adopted as the classifier.
In this paper, 6 subexperiments are conducted by combining different feature selection methods with 2 kinds of candidate feature
sets. Under 1006 review documents of cars, the experimental results indicate that the Fisher’s discriminant ratio based on
word frequency estimation has the best performance with F value 83.3% while the candidate features are the words which appear
in both positive and negative texts.
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