AI RESEARCH
Beyond Words: Multimodal LLM Knows When to Speak
arXiv CS.CL
•
ArXi:2505.14654v2 Announce Type: replace-cross Chatbots via large language models (LLMs) generate fluent responses but often struggle with when to speak, especially for brief, timely listener reactions during ongoing dialogue. We present a multimodal strategy for LLMs, which leverages synchronized video, audio, and text cues to improve conversational timing awareness. The strategy reformulates response timing as a dense response-type prediction task, enabling an agent to decide whether to remain silent, produce a short reaction, or start a full response under streaming constraints.