Sentiment Classification Based on Syntax Tree Pruning and Tree Kernel
Sentiment classification is a way to analyze the subjective information in the text and then mine the opinion. We focus on the sentence-level sentiment classification. On the systematically analyzing the importance and difficulties of the sentence-level sentiment classification, this paper proposes a syntax tree pruning and tree kernel-based approach to sentiment classification. In our method, the convolution kernel of SVM is first used to obtain structured information, and then apply syntax tree as a feature in Sentiment Classification. Firstly, we focus on how to apply the structured features from the syntax tree to the sentiment classification and propose a novel approach of sentence-level sentiment classification which apply the tree kernel and composite kernel to the SVM classifier. Secondly, we provide two kinds of syntax tree pruning strategies: adjectives-based and sentiment words-based. The experimental results show that our method can achieve better performance in sentence level Sentiment Classification.
sentiment classification tree kernel structured information pruning strategy
ZHANG Wei LI Peifeng ZHU Qiaoming
Department of Computer Science and Technology Soochow University Suzhou, China
国际会议
2010 Seventh Web Information System and Applications Conference(第七届全国web信息系统及其应用学术会议)
呼和浩特
英文
101-105
2010-08-20(万方平台首次上网日期,不代表论文的发表时间)