Improving Multi-Party Dialogue Discourse Parsing via Domain Integration

CODI 2021  ·  Zhengyuan Liu, Nancy F. Chen ·

While multi-party conversations are often less structured than monologues and documents, they are implicitly organized by semantic level correlations across the interactive turns, and dialogue discourse analysis can be applied to predict the dependency structure and relations between the elementary discourse units, and provide feature-rich structural information for downstream tasks. However, the existing corpora with dialogue discourse annotation are collected from specific domains with limited sample sizes, rendering the performance of data-driven approaches poor on incoming dialogues without any domain adaptation. In this paper, we first introduce a Transformer-based parser, and assess its cross-domain performance. We next adopt three methods to gain domain integration from both data and language modeling perspectives to improve the generalization capability. Empirical results show that the neural parser can benefit from our proposed methods, and performs better on cross-domain dialogue samples.

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Datasets


Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Discourse Parsing Molweni Hierarchical Link F1 80.1 # 6
Link & Rel F1 56.1 # 6
Discourse Parsing STAC Hierarchical Link F1 75.5 # 1
Link & Rel F1 57.2 # 4

Methods


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