Speaker-Aware Discourse Parsing on Multi-Party Dialogues

COLING 2022  ·  Nan Yu, Guohong Fu, Min Zhang ·

Discourse parsing on multi-party dialogues is an important but difficult task in dialogue systems and conversational analysis. It is believed that speaker interactions are helpful for this task. However, most previous research ignores speaker interactions between different speakers. To this end, we present a speaker-aware model for this task. Concretely, we propose a speaker-context interaction joint encoding (SCIJE) approach, using the interaction features between different speakers. In addition, we propose a second-stage pre-training task, same speaker prediction (SSP), enhancing the conversational context representations by predicting whether two utterances are from the same speaker. Experiments on two standard benchmark datasets show that the proposed model achieves the best-reported performance in the literature. We will release the codes of this paper to facilitate future research.

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Datasets


Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Benchmark
Discourse Parsing Molweni SSP-BERT + SCIJE Link F1 83.7 # 2
Link & Rel F1 59.4 # 3
Discourse Parsing STAC SSP-BERT + SCIJE Link F1 73.0 # 6
Link & Rel F1 57.4 # 2

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