Emotions are experienced and expressed through various response systems. Coherence between emotional experience and emotional expression is considered important to clients' well being. To date, emotional coherence (EC) has been studied at a single time point using lab-based tasks with relatively small datasets. No study has examined EC between the subjective experience of emotions and emotion expression in therapy or whether this coherence is associated with clients' well being. Natural language Processing (NLP) approaches have been applied to identify emotions from psychotherapy dialogue, which can be implemented to study emotional processes on a larger scale. However, these methods have yet to be used to study coherence between emotional experience and emotional expression over the course of therapy and whether it relates to clients' well-being. This work presents an end-to-end approach where we use emotion predictions from our transformer based emotion recognition model to study emotional coherence and its diagnostic potential in psychotherapy research. We first employ our transformer based approach on a Hebrew psychotherapy dataset to automatically label clients' emotions at utterance level in psychotherapy dialogues. We subsequently investigate the emotional coherence between clients' self-reported emotional states and our model-based emotion predictions. We also examine the association between emotional coherence and clients' well being. Our findings indicate a significant correlation between clients' self-reported emotions and positive and negative emotions expressed verbally during psychotherapy sessions. Coherence in positive emotions was also highly correlated with clients well-being. These results illustrate how NLP can be applied to identify important emotional processes in psychotherapy to improve diagnosis and treatment for clients suffering from mental-health problems.
翻译:情感和情感表达的一致性被认为对客户的福祉很重要。迄今为止,情感一致性(EC)已经用相对小的数据集在同一个时间点上用实验室任务研究过。 没有研究过治疗中情感和情感表达的主观经验或这种一致性是否与客户的福祉相关。 自然语言处理(NLP)方法已经用于识别心理治疗对话的情感,可以应用到更大规模地研究情感过程。然而,这些方法尚未用于研究治疗过程中情感和情感表达的一致性,以及是否与客户福祉有关。这项工作提出了一种端到端的方法,我们利用基于情感识别模型的情感预测来研究情感一致性及其在心理治疗研究中的诊断潜力。我们首先采用了基于希伯来语心理治疗数据集的变异器,在心理治疗对话中自动将客户的情绪情绪描述定位定位在更大规模上。我们随后调查了客户自我报告的情感状态和基于模式的情感表达的一致性,在对客户的情绪分析中,我们还审视了情感和情绪分析过程中的正面联系。我们分析客户之间的情绪一致性和情绪分析过程是积极的。我们对自己和情绪分析结果中的正面的对比。