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Main Authors: Shen, Huan, Wang, Yingao, Huang, Shangkun, Zou, Wei, Chen, Yunzhang
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.25434
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author Shen, Huan
Wang, Yingao
Huang, Shangkun
Zou, Wei
Chen, Yunzhang
author_facet Shen, Huan
Wang, Yingao
Huang, Shangkun
Zou, Wei
Chen, Yunzhang
contents Turn-taking modeling is fundamental to spoken dialogue systems, yet its evaluation remains fragmented and often limited to binary boundary detection under narrow interaction settings. Such protocols hinder systematic comparison and obscure model weaknesses across conversational conditions. We present CoDeTT, a context-aware decision benchmark for turn-taking evaluation. CoDeTT formulates turn-taking as a structured decision problem and constructs a multi-scenario dataset with fine-grained decision categories and controlled context variations. Under a unified evaluation protocol, we assess representative existing models and observe substantial performance disparities across decision types and interaction scenarios. CoDeTT provides a standardized benchmark for systematic and context-aware evaluation of turn-taking systems. The benchmark dataset and evaluation toolkit are available at https://yingaowang-casia.github.io/CoDeTT.github.io/.
format Preprint
id arxiv_https___arxiv_org_abs_2603_25434
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle CoDeTT: A Context-Aware Decision Benchmark for Turn-Taking Evaluation
Shen, Huan
Wang, Yingao
Huang, Shangkun
Zou, Wei
Chen, Yunzhang
Sound
Turn-taking modeling is fundamental to spoken dialogue systems, yet its evaluation remains fragmented and often limited to binary boundary detection under narrow interaction settings. Such protocols hinder systematic comparison and obscure model weaknesses across conversational conditions. We present CoDeTT, a context-aware decision benchmark for turn-taking evaluation. CoDeTT formulates turn-taking as a structured decision problem and constructs a multi-scenario dataset with fine-grained decision categories and controlled context variations. Under a unified evaluation protocol, we assess representative existing models and observe substantial performance disparities across decision types and interaction scenarios. CoDeTT provides a standardized benchmark for systematic and context-aware evaluation of turn-taking systems. The benchmark dataset and evaluation toolkit are available at https://yingaowang-casia.github.io/CoDeTT.github.io/.
title CoDeTT: A Context-Aware Decision Benchmark for Turn-Taking Evaluation
topic Sound
url https://arxiv.org/abs/2603.25434