Identifying Interlocutors' Behaviors and its Timings Involved with Impression Formation from Head-Movement Features and Linguistic Features

Shumpei Otsuchi, Koya Ito, Yoko Ishii, Ryo Ishii, Shinichirou Eitoku, Kazuhiro Otsuka
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Abstract

A prediction-explanation framework is proposed to identify when and what behaviors are involved in forming interlocutors’ impressions in group discussions. We targeted the self-reported scores of 16 impressions, including enjoyment and concentration. To that end, we formulate the problem as discovering behavioral features that contributed to the impression prediction and determining the timings that the behaviors frequently occurred. To solve this problem, this paper proposes a two-fold framework consisting of the prediction part followed by the explanation part. The former prediction part employs random forest regressors using functional head-movement features and BERT-based linguistic features, which can capture various aspects of interactive conversational behaviors. The later part measures the levels of features’ contribution to the prediction using a SHAP analysis and introduces a novel idea of temporal decomposition of features’ contributions over time. The influential behaviors and their timings are identified from local maximums of the temporal distribution of features’ contributions. Targeting 17-group 4-female discussions, the predictability and explainability of the proposed framework are confirmed by some case studies and quantitative evaluations of the detected timings.
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从头部运动特征和语言特征识别对话者的行为及其时间与印象形成有关
提出了一个预测-解释框架来确定小组讨论中对话者印象形成的时间和行为。我们的目标是16种印象的自我报告分数,包括享受和专注。为此,我们将问题表述为发现有助于印象预测的行为特征,并确定行为频繁发生的时间。为了解决这一问题,本文提出了一个由预测部分和解释部分组成的双重框架。前者的预测部分采用随机森林回归,利用头部运动功能特征和基于bert的语言特征,可以捕捉交互式会话行为的各个方面。后一部分使用SHAP分析测量特征对预测的贡献水平,并引入了特征随时间贡献的时间分解的新思想。通过特征贡献时间分布的局部最大值来确定影响行为及其时间。针对17组4名女性的讨论,提出的框架的可预测性和可解释性得到了一些案例研究和对所发现时间的定量评价的证实。
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