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Enabling Conversational Behavior Reasoning Capabilities in Full-Duplex Speech

About

Human conversation is organized by an implicit chain of thoughts that manifests as timed speech acts. Capturing this causal pathway is key to building natural full-duplex interactive systems. We introduce a framework that enables reasoning over conversational behaviors by modeling this process as causal inference within a Graph-of-Thoughts (GoT). Our approach formalizes the intent-to-action pathway with a hierarchical labeling scheme, predicting high-level communicative intents and low-level speech acts to learn their causal and temporal dependencies. To train this system, we develop a hybrid corpus that pairs controllable, event-rich simulations with human-annotated rationales and real conversational speech. The GoT framework structures streaming predictions as an evolving graph, enabling a multimodal transformer to forecast the next speech act, generate concise justifications for its decisions, and dynamically refine its reasoning. Experiments on both synthetic and real duplex dialogues show that the framework delivers robust behavior detection, produces interpretable reasoning chains, and establishes a foundation for benchmarking conversational reasoning in full duplex spoken dialogue systems.

Shuchang Pan, Siddharth Banerjee, Dhruv Hebbar, Siddhant Patel, Akshaj Gupta, Kan Jen Cheng, Hanjo Kim, Zeyi Austin Li, Martin Q. Ma, Tingle Li, Gopala Anumanchipalli, Jiachen Lian• 2025

Related benchmarks

TaskDatasetResultRank
Conversational Behavior DetectionCANDOR
AUC79.6
3
Conversational Behavior ReasoningSynthetic
BLEU-10.48
1
Conversational Behavior ReasoningCANDOR
BLEU-10.58
1
Rationale GenerationGPT-4 full-duplex audio
Mean Rating7.07
1
Rationale GenerationMoshi full-duplex
Mean Rating6.85
1
Rationale GenerationSimulation dataset audio
Mean Subjective Rating6.3
1
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