Predicting Influential Statements in Group Discussions using Speech and Head Motion Information

Fumio Nihei, Y. Nakano, Yuki Hayashi, Hung-Hsuan Huang, S. Okada
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引用次数: 48

Abstract

Group discussions are used widely when generating new ideas and forming decisions as a group. Therefore, it is assumed that giving social influence to other members through facilitating the discussion is an important part of discussion skill. This study focuses on influential statements that affect discussion flow and highly related to facilitation, and aims to establish a model that predicts influential statements in group discussions. First, we collected a multimodal corpus using different group discussion tasks; in-basket and case-study. Based on schemes for analyzing arguments, each utterance was annotated as being influential or not. Then, we created classification models for predicting influential utterances using prosodic features as well as attention and head motion information from the speaker and other members of the group. In our model evaluation, we discovered that the assessment of each participant in terms of discussion facilitation skills by experienced observers correlated highly to the number of influential utterances by a given participant. This suggests that the proposed model can predict influential statements with considerable accuracy, and the prediction results can be a good predictor of facilitators in group discussions.
利用言语和头部运动信息预测小组讨论中有影响力的陈述
小组讨论在产生新想法和形成决策时被广泛使用。因此,我们认为,通过促进讨论给其他成员带来社会影响是讨论技巧的重要组成部分。本研究关注影响讨论流程且与促进性高度相关的有影响力言论,旨在建立预测小组讨论中有影响力言论的模型。首先,我们使用不同的小组讨论任务收集了一个多模态语料库;篮子和案例研究。根据论点分析方案,将每句话标注为有影响力或没有影响力。然后,我们创建了分类模型,使用韵律特征以及说话者和其他成员的注意力和头部运动信息来预测有影响力的话语。在我们的模型评估中,我们发现经验丰富的观察者对每个参与者的讨论促进技能的评估与给定参与者的有影响力的话语数量高度相关。这表明所提出的模型可以相当准确地预测有影响力的陈述,并且预测结果可以很好地预测小组讨论中的促进者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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