Connective prediction using machine learning for implicit discourse relation classification

IJCNN(2012)

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摘要
Implicit discourse relation classification is a challenge task due to missing discourse connective. Some work directly adopted machine learning algorithms and linguistically informed features to address this task. However, one interesting solution is to automatically predict implicit discourse connective. In this paper, we present a novel two-step machine learning-based approach to implicit discourse relation classification. We first use machine learning method to automatically predict the discourse connective that can best express the implicit discourse relation. Then the predicted implicit discourse connective is used to classify the implicit discourse relation. Experiments on Penn Discourse Treebank 2.0 (PDTB) and Biomedical Discourse Relation Bank (BioDRB) show that our method performs better than the baseline system and previous work.
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关键词
penn discourse treebank 2.0,machine learning algorithms,learning (artificial intelligence),pattern classification,two-step machine learning-based approach,biomedical discourse relation bank,implicit discourse relation classification,automatically implicit discourse connective prediction,biodrb,natural language processing,pdtb,optimization,support vector machines,learning artificial intelligence
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