1. An Entropy-Based Method with a New Benchmark Dataset for Chinese Textual Affective Structure Analysis.
- Author
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Xiong, Shufeng, Fan, Xiaobo, Batra, Vishwash, Zeng, Yiming, Zhang, Guipei, Xi, Lei, Liu, Hebing, and Shi, Lei
- Subjects
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SOCIAL media , *AFFECT (Psychology) , *AFFECTIVE computing , *MARKOV processes , *ARTIFICIAL intelligence - Abstract
Affective understanding of language is an important research focus in artificial intelligence. The large-scale annotated datasets of Chinese textual affective structure (CTAS) are the foundation for subsequent higher-level analysis of documents. However, there are very few published datasets for CTAS. This paper introduces a new benchmark dataset for the task of CTAS to promote development in this research direction. Specifically, our benchmark is a CTAS dataset with the following advantages: (a) it is Weibo-based, which is the most popular Chinese social media platform used by the public to express their opinions; (b) it includes the most comprehensive affective structure labels at present; and (c) we propose a maximum entropy Markov model that incorporates neural network features and experimentally demonstrate that it outperforms the two baseline models. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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