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Autori principali: Navarro, Madeline, O'Bryan, Lisa, Segarra, Santiago
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2510.18649
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author Navarro, Madeline
O'Bryan, Lisa
Segarra, Santiago
author_facet Navarro, Madeline
O'Bryan, Lisa
Segarra, Santiago
contents We propose a flexible probabilistic model for predicting turn-taking patterns in group conversations based solely on individual characteristics and past speaking behavior. Many models of conversation dynamics cannot yield insights that generalize beyond a single group. Moreover, past works often aim to characterize speaking behavior through a universal formulation that may not be suitable for all groups. We thus develop a generalization of prior conversation models that predicts speaking turns among individuals in any group based on their individual characteristics, that is, personality traits, and prior speaking behavior. Importantly, our approach provides the novel ability to learn how speaking inclination varies based on when individuals last spoke. We apply our model to synthetic and real-world conversation data to verify the proposed approach and characterize real group interactions. Our results demonstrate that previous behavioral models may not always be realistic, motivating our data-driven yet theoretically grounded approach.
format Preprint
id arxiv_https___arxiv_org_abs_2510_18649
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Learning Time-Varying Turn-Taking Behavior in Group Conversations
Navarro, Madeline
O'Bryan, Lisa
Segarra, Santiago
Machine Learning
We propose a flexible probabilistic model for predicting turn-taking patterns in group conversations based solely on individual characteristics and past speaking behavior. Many models of conversation dynamics cannot yield insights that generalize beyond a single group. Moreover, past works often aim to characterize speaking behavior through a universal formulation that may not be suitable for all groups. We thus develop a generalization of prior conversation models that predicts speaking turns among individuals in any group based on their individual characteristics, that is, personality traits, and prior speaking behavior. Importantly, our approach provides the novel ability to learn how speaking inclination varies based on when individuals last spoke. We apply our model to synthetic and real-world conversation data to verify the proposed approach and characterize real group interactions. Our results demonstrate that previous behavioral models may not always be realistic, motivating our data-driven yet theoretically grounded approach.
title Learning Time-Varying Turn-Taking Behavior in Group Conversations
topic Machine Learning
url https://arxiv.org/abs/2510.18649