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Deep Enhanced Representation for Implicit Discourse Relation Recognition

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Implicit discourse relation recognition is a challenging task as the relation prediction without explicit connectives in discourse parsing needs understanding of text spans and cannot be easily derived from surface features from the input sentence pairs. Thus, properly representing the text is very crucial to this task. In this paper, we propose a model augmented with different grained text representations, including character, subword, word, sentence, and sentence pair levels. The proposed deeper model is evaluated on the benchmark treebank and achieves state-of-the-art accuracy with greater than 48% in 11-way and $F_1$ score greater than 50% in 4-way classifications for the first time according to our best knowledge.

Hongxiao Bai, Hai Zhao• 2018

Related benchmarks

TaskDatasetResultRank
Top-level Implicit Discourse Relation RecognitionPDTB 2.0 (Ji split)
F1 Score51.06
61
Second-level Implicit Discourse Relation RecognitionPDTB 2.0 (Ji split)
Accuracy48.22
54
Second-level Implicit Discourse Relation RecognitionPDTB 2.0 (Lin split)
Accuracy45.73
41
Discourse Relation RecognitionPDTB 2.0 (test)
Accuracy48.22
5
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