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Personalized MTV Affective Analysis Using User Profile
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Personalized MTV Affective Analysis Using User Profile
Shiliang Zhang8, 9 , Qingming Huang8, 9 , Qi Tian10 , Shuqiang Jiang8 and Wen Gao8 
| (8) |
Key Lab of Intell. Info. Process., Inst. of Comput. Tech., Chinese Academy of Sciences, Beijing, 100080, China |
| (9) |
Graduate University of Chinese Academy of Sciences, Beijing, 100080, China |
| (10) |
Department of Computer Science, University of Texas at San Antonio, TX 78249, USA |
Abstract
At present, MTV has become an important favorite pastime to people. Affective analysis which can extract the affective states
contained in MTVs could be a potential and promising solution for efficient and intelligent MTV access. One of the most challenging
and insufficiently covered problems of affective analysis is that affective understanding is personal and various among users.
Consequently, it is meaningful to develop personalized affective modeling technique. Because user’s feedbacks and descriptions
about affective sates provide valuable and relatively reliable clues about user’s personal affective understanding, it is
supposed to be reasonable to conduct personalized affective modeling by analyzing the affective descriptions recorded in user
profile. Utilizing the user profile, we propose a novel approach combining support vector regression and psychological affective
model to achieve personalized affective analysis. The experimental results including both user study and comparisons between
current approaches illustrate the effectiveness and advantages of our proposed method.
Keywords Affective Content Analysis - Dimensional Affective Model - Support Vector Regression - Personalized Affective Analysis
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