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Recursive Neural Networks for Coding Therapist and Patient Behavior in Motivational Interviewing

机译:动机神经访谈中治疗师和患者行为的递归神经网络

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Motivational Interviewing (MI) is an efficacious treatment for substance use disorders and other problem behaviors (Lundahl and Burke, 2009). However, little is known about the specific mechanisms that drive therapeutic change. A growing body of research has focused on coding within-session language to better understand how therapist and patient language mutually influence each other and predict successful (or unsuccessful) treatment outcomes. These studies typically use human raters, requiring considerable financial, time, and training costs for conducting such research. This paper describes the development and testing of a recursive neural network (RNN) model for rating 78,977 therapist and patient talk turns across 356 MI sessions. We assessed the accuracy of RNNs in predicting human ratings for client speech and compared them to standard n-gram models. The RNN model showed improvement over ngram models for some codes, but overall, all of the models performed well below human reliability, demonstrating the difficulty of the task.
机译:动机访谈(MI)是一种有效的治疗药物滥用障碍和其他问题行为的方法(Lundahl和Burke,2009)。但是,关于驱动治疗改变的具体机制知之甚少。越来越多的研究集中于对会话内语言进行编码,以更好地了解治疗师和患者的语言如何相互影响,并预测成功的(或不成功的)治疗结果。这些研究通常使用人工评估者,进行此类研究需要大量的财务,时间和培训费用。本文介绍了递归神经网络(RNN)模型的开发和测试,该模型可为356个MI会话中的78,977位治疗师和患者交谈次数评分。我们评估了RNN在预测客户语音的人类评级时的准确性,并将其与标准n-gram模型进行了比较。 RNN模型对某些代码显示出比ngram模型更好的效果,但是总的来说,所有模型的性能都远低于人类的可靠性,这说明了任务的难度。

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