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Topic-Aware Multi-turn Dialogue Modeling

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In the retrieval-based multi-turn dialogue modeling, it remains a challenge to select the most appropriate response according to extracting salient features in context utterances. As a conversation goes on, topic shift at discourse-level naturally happens through the continuous multi-turn dialogue context. However, all known retrieval-based systems are satisfied with exploiting local topic words for context utterance representation but fail to capture such essential global topic-aware clues at discourse-level. Instead of taking topic-agnostic n-gram utterance as processing unit for matching purpose in existing systems, this paper presents a novel topic-aware solution for multi-turn dialogue modeling, which segments and extracts topic-aware utterances in an unsupervised way, so that the resulted model is capable of capturing salient topic shift at discourse-level in need and thus effectively track topic flow during multi-turn conversation. Our topic-aware modeling is implemented by a newly proposed unsupervised topic-aware segmentation algorithm and Topic-Aware Dual-attention Matching (TADAM) Network, which matches each topic segment with the response in a dual cross-attention way. Experimental results on three public datasets show TADAM can outperform the state-of-the-art method, especially by 3.3% on E-commerce dataset that has an obvious topic shift.

Yi Xu, Hai Zhao, Zhuosheng Zhang• 2020

Related benchmarks

TaskDatasetResultRank
Dialogue SegmentationDialSeg711
Pk0.386
44
Dialogue SegmentationTIAGE
Pk0.491
39
Dialogue Topic SegmentationDoc2Dial
Pk48.6
34
Dialogue Topic SegmentationSuperSeg
Pk Score54.5
28
Dialogue Topic SegmentationVHF
Pk Score41.5
25
Dialogue Topic SegmentationVSTAR
WinDif0.615
7
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