Speak or Stay Silent: Context-Aware Turn-Taking in Multi-Party Dialogue
arXiv cs.AI / 3/13/2026
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Key Points
- The paper formulates context-aware turn-taking for multi-party dialogue, requiring the assistant to decide at every detected pause whether to speak or stay silent based on the full conversation context.
- It introduces a benchmark of over 120K labeled conversations spanning three multi-party corpora to evaluate turn-taking behavior.
- The study shows eight recent large language models fail at context-aware turn-taking under zero-shot prompting.
- It proposes a supervised fine-tuning approach with reasoning traces, achieving up to 23 percentage points improvement in balanced accuracy.
- It concludes that context-aware turn-taking is not an emergent capability and must be explicitly trained.
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