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Papers/Self- and Pseudo-self-supervised Prediction of Speaker and...

Self- and Pseudo-self-supervised Prediction of Speaker and Key-utterance for Multi-party Dialogue Reading Comprehension

Yiyang Li, Hai Zhao

2021-09-08Findings (EMNLP) 2021 11Reading ComprehensionQuestion AnsweringMachine Reading Comprehension
PaperPDFCode(official)

Abstract

Multi-party dialogue machine reading comprehension (MRC) brings tremendous challenge since it involves multiple speakers at one dialogue, resulting in intricate speaker information flows and noisy dialogue contexts. To alleviate such difficulties, previous models focus on how to incorporate these information using complex graph-based modules and additional manually labeled data, which is usually rare in real scenarios. In this paper, we design two labour-free self- and pseudo-self-supervised prediction tasks on speaker and key-utterance to implicitly model the speaker information flows, and capture salient clues in a long dialogue. Experimental results on two benchmark datasets have justified the effectiveness of our method over competitive baselines and current state-of-the-art models.

Results

TaskDatasetMetricValueModel
Question AnsweringMolweniEM58Li and Zhao - ELECTRA
Question AnsweringMolweniF172.9Li and Zhao - ELECTRA
Question AnsweringMolweniEM49.2Li and Zhao - BERT
Question AnsweringMolweniF164Li and Zhao - BERT
Question AnsweringFriendsQAEM55.8Li and Zhao - ELECTRA
Question AnsweringFriendsQAF172.3Li and Zhao - ELECTRA
Question AnsweringFriendsQAEM46.9Li and Zhao - BERT
Question AnsweringFriendsQAF163.9Li and Zhao - BERT

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