DocumentCode
2348040
Title
Maximum entropy based emotion classification of Chinese blog sentences
Author
Wang, Cheng ; Quan, Changqin ; Ren, Fuji
Author_Institution
Inst. of Technol. & Sci., Univ. of Tokushima, Tokushima, Japan
fYear
2010
fDate
21-23 Aug. 2010
Firstpage
1
Lastpage
7
Abstract
At present there are increasing studies on the classification of textual emotions. Especially with the rapid developments of Internet technology, classifying blog emotions has become a new research field. In this paper, we classified the sentence emotion using the machine learning method based on the maximum entropy model and the Chinese emotion corpus (Ren-CECps)*. Ren-CECps contains eight basic emotion categories (expect, joy, love, surprise, anxiety, sorrow, hate and anger), which presents us with the opportunity to systematically analyze the complex human emotions. Three features (keywords, POS and intensity) were considered for sentence emotion classification, and three aspect experiments have been carried out: 1) classification of any two emotions, 2) classification of eight emotions, and 3) classification of positive and negative emotions. The highest classification accuracies of the three aspect experiments were 90.62%, 35.66% and 73.96%, respectively.
Keywords
Web sites; learning (artificial intelligence); maximum entropy methods; natural language processing; Chinese blog sentences; Chinese emotion corpus; POS feature; eight-emotion classification aspect; emotion classification; intensity feature; keywords feature; machine learning; maximum entropy; negative emotion classification aspect; positive emotion classification aspect; textual emotions; two-emotion classification aspect; Blogs; Context; Chinese Emotion Corpus; Emotion Classification; Maximum Entropy Model;
fLanguage
English
Publisher
ieee
Conference_Titel
Natural Language Processing and Knowledge Engineering (NLP-KE), 2010 International Conference on
Conference_Location
Beijing
Print_ISBN
978-1-4244-6896-6
Type
conf
DOI
10.1109/NLPKE.2010.5587798
Filename
5587798
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