A novel probabilistic framework is proposed for inferring the structure of conversation in face-to-face multiparty communication, based on gaze patterns, head directions and the presence/absence of utterances. As the structure of conversation, this study focuses on the combination of participants and their participation roles. First, we assess the gaze patterns that frequently appear in conversations, and define typical types of conversation structure, called conversational regime, and hypothesize that the regime represents the high-level process that governs how people interact during conversations. Next, assuming that the regime changes over time exhibit Markov properties, we propose a probabilistic conversation model based on Markov-switching; the regime controls the dynamics of utterances and gaze patterns, which stochastically yield measurable head-direction changes. Furthermore, a Gibbs sampler is used to realize the Bayesian estimation of regime, gaze pattern, and model parameters from observed head directions and utterances. Experiments on four-person conversations confirm the effectiveness of the framework in identifying conversation structures.
This paper addresses the task of mining typical behavioral patterns from small group face-to-face interactions and linking them to social-psychological group variables. Towards this goal, we define group speaking and looking cues by aggregating automatically extracted cues at the individual and dyadic levels. Then, we define a bag of nonverbal patterns (Bag-of-NVPs) to discretize the group cues. The topics learnt using the Latent Dirichlet Allocation (LDA) topic model are then interpreted by studying the correlations with group variables such as group composition, group interpersonal perception, and group performance. Our results show that both group behavior cues and topics have significant correlations with (and predictive information for) all the above variables. For our study, we use interactions with unacquainted members i.e. newly formed groups.
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