Build Emotion Lexicon from the Mood of Crowd via Topic-Assisted Joint Non-negative Matrix Factorization
Author(s) -
Kaisong Song,
Wei Gao,
Ling Chen,
Shi Feng,
Daling Wang,
Chengqi Zhang
Publication year - 2016
Publication title -
proceedings of the 45th international acm sigir conference on research and development in information retrieval
Language(s) - English
Resource type - Conference proceedings
DOI - 10.1145/2911451.2914759
Subject(s) - lexicon , computer science , natural language processing , annotation , artificial intelligence , benchmark (surveying) , matrix decomposition , witness , emotion classification , eigenvalues and eigenvectors , physics , geodesy , quantum mechanics , programming language , geography
In the research of building emotion lexicons, we witness the exploitation of crowd-sourced affective annotation given by readers of online news articles. Such approach ignores the relationship between topics and emotion expressions which are often closely correlated. We build an emotion lexicon by developing a novel joint non-negative matrix factorization model which not only incorporates crowd-annotated emotion labels of articles but also generates the lexicon using the topic-specific matrices obtained from the factorization process. We evaluate our lexicon via emotion classification on both benchmark and built-in-house datasets. Results demonstrate the high-quality of our lexicon.
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