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CobSeg: Coherence Boundary Modeling for Dialogue Topic Segmentation

About

Dialogue topic segmentation is critical in many human-AI collaborative applications which requires identifying heterogeneous boundary cues, including lexical transitions near utterance edges and semantic discontinuities across utterances. Existing utterance models often dilute these local lexical signals. We propose CobSeg, a novel multi-branch architecture that separates coherence-level semantic continuity from lexical boundary transitions and recovers both through directional boundary prediction. CobSeg further uses boundary informativeness weighting to emphasize high-utility utterance positions, and incorporates a corpus-derived topic coherence cue with learned combination weights. While CobSeg is evaluated as a compact trainable segmenter under supervised gold-boundary training and a pseudo-label setting with automatically induced boundaries, it performs enhanced boundary prediction without LLM calls during inference. Across five benchmarks, it improves $P_k$ and $W_d$ particularly when local lexical cues are prominent: under gold supervision, it reduces $P_k$ by 0.7 points and $W_d$ by 0.6 points on VHF, and reaches $P_k$ of 1.0 on DialSeg711; with induced boundaries, it reduces $P_k$ by 14.8 points on VHF, by 1.5 points on DialSeg711, and by 1.1 points on TIAGE, outperforming prior non-LLM approaches.

Sijin Sun, Liangbin Zhao, Jiaxiang Cai, Ming Deng, Mingyu Luo, Xiuju Fu• 2026

Related benchmarks

TaskDatasetResultRank
Dialogue SegmentationDialSeg711
Pk0.143
44
Dialogue SegmentationTIAGE
Pk0.389
39
Dialogue Topic SegmentationDoc2Dial
Pk35.6
34
Dialogue Topic SegmentationSuperSeg
Pk Score40.7
28
Dialogue Topic SegmentationVHF
Pk Score10.6
25
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