Question-Interlocutor Scope Realized Graph Modeling over Key Utterances for Dialogue Reading Comprehension
Jiangnan Li, Mo Yu, Fandong Meng, Zheng Lin, Peng Fu and, Weiping Wang, Jie Zhou

TL;DR
This paper introduces a novel graph-based approach for dialogue reading comprehension that better models speaker roles and utterance scopes, leading to improved answer extraction accuracy.
Contribution
It proposes a new key utterance extraction method and a question-interlocutor scope realized graph (QuISG) for enhanced dialogue context modeling.
Findings
Achieves better results than previous methods on benchmark datasets.
Effectively models speaker roles and utterance scopes in dialogues.
Improves answer span extraction accuracy.
Abstract
In this work, we focus on dialogue reading comprehension (DRC), a task extracting answer spans for questions from dialogues. Dialogue context modeling in DRC is tricky due to complex speaker information and noisy dialogue context. To solve the two problems, previous research proposes two self-supervised tasks respectively: guessing who a randomly masked speaker is according to the dialogue and predicting which utterance in the dialogue contains the answer. Although these tasks are effective, there are still urging problems: (1) randomly masking speakers regardless of the question cannot map the speaker mentioned in the question to the corresponding speaker in the dialogue, and ignores the speaker-centric nature of utterances. This leads to wrong answer extraction from utterances in unrelated interlocutors' scopes; (2) the single utterance prediction, preferring utterances similar to the…
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Taxonomy
TopicsTopic Modeling · Natural Language Processing Techniques · Speech and dialogue systems
