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arxiv: 2004.03760 · v2 · pith:MVUAH4BM · submitted 2020-04-08 · cs.CL

DialBERT: A Hierarchical Pre-Trained Model for Conversation Disentanglement

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classification cs.CL
keywords bertmodelconversationconversationsdialbertdisentanglementinformationutterance
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Disentanglement is a problem in which multiple conversations occur in the same channel simultaneously, and the listener should decide which utterance is part of the conversation he will respond to. We propose a new model, named Dialogue BERT (DialBERT), which integrates local and global semantics in a single stream of messages to disentangle the conversations that mixed together. We employ BERT to capture the matching information in each utterance pair at the utterance-level, and use a BiLSTM to aggregate and incorporate the context-level information. With only a 3% increase in parameters, a 12% improvement has been attained in comparison to BERT, based on the F1-Score. The model achieves a state-of-the-art result on the a new dataset proposed by IBM and surpasses previous work by a substantial margin.

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  1. DD-GEPA: Prompt Optimization for Dialogue Disentanglement Focusing on Task Instruction and Utterance Representation

    cs.SE 2026-06 unverdicted novelty 4.0

    DD-GEPA decomposes and optimizes prompts with GEPA for LLM-based dialogue disentanglement, reporting accuracy gains over baseline and hand-crafted prompts on benchmarks.