How romantic partners interact with each other during a conflict influences how they feel at the end of the interaction and is predictive of whether the partners stay together in the long term. Hence understanding the emotions of each partner is important. Yet current approaches that are used include self-reports which are burdensome and hence limit the frequency of this data collection. Automatic emotion prediction could address this challenge. Insights from psychology research indicate that partners' behaviors influence each other's emotions in conflict interaction and hence, the behavior of both partners could be considered to better predict each partner's emotion. However, it is yet to be investigated how doing so compares to only using each partner's own behavior in terms of emotion prediction performance. In this work, we used BERT to extract linguistic features (i.e., what partners said) and openSMILE to extract paralinguistic features (i.e., how they said it) from a data set of 368 German-speaking Swiss couples (N = 736 individuals) who were videotaped during an 8-minutes conflict interaction in the laboratory. Based on those features, we trained machine learning models to predict if partners feel positive or negative after the conflict interaction. Our results show that including the behavior of the other partner improves the prediction performance. Furthermore, for men, considering how their female partners spoke is most important and for women considering what their male partner said is most important in getting better prediction performance. This work is a step towards automatically recognizing each partners' emotion based on the behavior of both, which would enable a better understanding of couples in research, therapy, and the real world.
翻译:冲突期间的浪漫伴侣互动如何影响彼此在互动结束时的感受,并且预测到对方是否长期在一起。 因此了解每个伴侣的情绪很重要。 但目前所采用的方法包括自我报告,这种报告过于繁琐,从而限制数据收集的频率。 自动情感预测可以应对这一挑战。 心理学研究的观察显示,伴侣的行为在冲突互动中影响对方的情感,因此,可以考虑双方的行为更好地预测对方的情感。 然而,目前还有待调查的是,这样做与每个伴侣本身的行为相比,是否长期保持在一起。 因此,了解每个伴侣的情感预测表现很重要。 在这项工作中,我们利用BERT 来提取语言特征(即合作伙伴所说的话),并开放SMILE 来提取语言特征(即他们所说的方式 ) 。 从368 德语瑞士夫妇(N= 736人)的一组数据来看, 他们的行为在8分钟的冲突互动中被录制为男性。 根据这些特征, 我们训练机器学习模型来预测每个伴侣的行为表现如何更好,