DocumentCode
1312596
Title
Mining Social Emotions from Affective Text
Author
Bao, Shenghua ; Xu, Shengliang ; Zhang, Li ; Yan, Rong ; Su, Zhong ; Han, Dingyi ; Yu, Yong
Author_Institution
IBM Research-China, Beijing
Volume
24
Issue
9
fYear
2012
Firstpage
1658
Lastpage
1670
Abstract
This paper is concerned with the problem of mining social emotions from text. Recently, with the fast development of web 2.0, more and more documents are assigned by social users with emotion labels such as happiness, sadness, and surprise. Such emotions can provide a new aspect for document categorization, and therefore help online users to select related documents based on their emotional preferences. Useful as it is, the ratio with manual emotion labels is still very tiny comparing to the huge amount of web/enterprise documents. In this paper, we aim to discover the connections between social emotions and affective terms and based on which predict the social emotion from text content automatically. More specifically, we propose a joint emotion-topic model by augmenting Latent Dirichlet Allocation with an additional layer for emotion modeling. It first generates a set of latent topics from emotions, followed by generating affective terms from each topic. Experimental results on an online news collection show that the proposed model can effectively identify meaningful latent topics for each emotion. Evaluation on emotion prediction further verifies the effectiveness of the proposed model.
Keywords
Blogs; Context modeling; Data models; Performance evaluation; Predictive models; Text mining; Affective text mining; emotion-topic model; performance evaluation;
fLanguage
English
Journal_Title
Knowledge and Data Engineering, IEEE Transactions on
Publisher
ieee
ISSN
1041-4347
Type
jour
DOI
10.1109/TKDE.2011.188
Filename
6007133
Link To Document