Chinese text sentiment classification based on granule network

With the expanding of text comment information, text sentiment classification become a hot issue. Domestic research on chinese sentiment classification mainly focus on segmentation and features selection or focus on classifying algorithm based on statistics. Rules mining method is a kind of important techniques of text classification. This paper propose a new approach which apply the rule mining by granule network constructing to sentiment classification. Approved by experiment result, text sentiment classification based on granule network is effective.

[1]  Bo Pang,et al.  Thumbs up? Sentiment Classification using Machine Learning Techniques , 2002, EMNLP.

[2]  Takeshi Koshiba,et al.  Text classification and keyword extraction by learning decision trees , 1993, Proceedings of 9th IEEE Conference on Artificial Intelligence for Applications.

[3]  Yiyu Yao,et al.  Interactive classification using a granule network , 2005, Fourth IEEE Conference on Cognitive Informatics, 2005. (ICCI 2005)..

[4]  Michael L. Littman,et al.  Measuring praise and criticism: Inference of semantic orientation from association , 2003, TOIS.

[5]  Yiyu Yao,et al.  On modeling data mining with granular computing , 2001, 25th Annual International Computer Software and Applications Conference. COMPSAC 2001.

[6]  Yiyu Yao,et al.  A Granular Computing Approach to Machine Learning , 2002, FSKD.

[7]  Y. Yao Granular Computing : basic issues and possible solutions , 2000 .