Dialogue disentanglement aims to detach the chronologically ordered utterances into several independent sessions. Conversation utterances are essentially organized and described by the underlying discourse, and thus dialogue disentanglement requires the full understanding and harnessing of the intrinsic discourse attribute. In this article, we propose enhancing dialogue disentanglement by taking full advantage of the dialogue discourse characteristics. First of all, in feature encoding stage, we construct the heterogeneous graph representations to model the various dialogue-specific discourse structural features, including the static speaker-role structures (i.e., speaker-utterance and speaker-mentioning structure) and the dynamic contextual structures (i.e., the utterance-distance and partial-replying structure). We then develop a structure-aware framework to integrate the rich structural features for better modeling the conversational semantic context. Second, in model learning stage, we perform optimization with a hierarchical ranking loss mechanism, which groups dialogue utterances into different discourse levels and carries training covering pairwise and session-wise levels hierarchically. Third, in inference stage, we devise an easy-first decoding algorithm, which performs utterance pairing under the easy-to-hard manner with a global context, breaking the constraint of traditional sequential decoding order. On two benchmark datasets, our overall system achieves new state-of-the-art performances on all evaluations. In-depth analyses further demonstrate the efficacy of each proposed idea and also reveal how our methods help advance the task. Our work has great potential to facilitate broader multi-party multi-thread dialogue applications.
机构:
Queens Univ, Ingenu Labs Res Inst, Kingston, ON, Canada
Queens Univ, ECE, Kingston, ON, CanadaQueens Univ, Ingenu Labs Res Inst, Kingston, ON, Canada
Liu, Hui
Shi, Zhan
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机构:
Queens Univ, Ingenu Labs Res Inst, Kingston, ON, Canada
Queens Univ, ECE, Kingston, ON, CanadaQueens Univ, Ingenu Labs Res Inst, Kingston, ON, Canada
Shi, Zhan
Gu, Jia-Chen
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机构:
Univ Sci & Technol China, Hefei, Peoples R ChinaQueens Univ, Ingenu Labs Res Inst, Kingston, ON, Canada
Gu, Jia-Chen
Liu, Quan
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机构:
iFLYTEK Res, State Key Lab Cognit Intelligence, Hefei, Peoples R ChinaQueens Univ, Ingenu Labs Res Inst, Kingston, ON, Canada
Liu, Quan
Wei, Si
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iFLYTEK Res, State Key Lab Cognit Intelligence, Hefei, Peoples R ChinaQueens Univ, Ingenu Labs Res Inst, Kingston, ON, Canada
Wei, Si
Zhu, Xiaodan
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Queens Univ, Ingenu Labs Res Inst, Kingston, ON, Canada
Queens Univ, ECE, Kingston, ON, CanadaQueens Univ, Ingenu Labs Res Inst, Kingston, ON, Canada
Zhu, Xiaodan
PROCEEDINGS OF THE TWENTY-NINTH INTERNATIONAL JOINT CONFERENCE ON ARTIFICIAL INTELLIGENCE,
2020,
: 3868
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3874
机构:
AUT Univ, Sch Commun Studies, Fac Design & Creat Technol, Auckland 1142, New ZealandAUT Univ, Sch Commun Studies, Fac Design & Creat Technol, Auckland 1142, New Zealand
Theunissen, Petra
Noordin, Wan Norbani Wan
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AUT Univ, Sch Commun Studies, Fac Design & Creat Technol, Auckland 1142, New ZealandAUT Univ, Sch Commun Studies, Fac Design & Creat Technol, Auckland 1142, New Zealand