Using computational models of learning to advance cognitive behavioral therapy.

Isabel M Berwian, Peter Hitchock, Sashank Pisupati, Gila Schoen, Yael Niv
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Abstract

Many psychotherapy interventions have a large evidence base and can help a substantial number of people with symptoms of mental health conditions. However, we still have little understanding of why treatments work. Early advances in psychotherapy, such as the development of exposure therapy, built on theoretical and experimental evidence from Pavlovian and instrumental conditioning. More generally, all psychotherapy achieves change through learning. The past 25 years have seen substantial developments in computational models of learning, with increased computational precision and a focus on multiple learning mechanisms and their interaction. Now might be a good time to formalize psychotherapy interventions as computational models of learning to improve our understanding of mechanisms of change in psychotherapy. To advance research and help bring together a new joint field of theory-driven computational psychotherapy, we first review literature on cognitive behavioral therapy (exposure therapy and cognitive restructuring) and introduce computational models of reinforcement learning and representation learning. We then suggest a mapping of these learning algorithms on change processes presumably underlying the effects of exposure therapy and cognitive restructuring. Finally, we outline how the understanding of interventions through the lens of learning algorithms can inform intervention research.

使用学习的计算模型来推进认知行为疗法。
许多心理治疗干预有大量的证据基础,可以帮助大量有心理健康状况症状的人。然而,我们仍然对为什么治疗有效知之甚少。心理治疗的早期进展,如暴露疗法的发展,建立在巴甫洛夫条件反射和工具条件反射的理论和实验证据之上。更一般地说,所有的心理治疗都是通过学习来实现改变的。在过去的25年里,随着计算精度的提高和对多种学习机制及其相互作用的关注,学习的计算模型有了实质性的发展。现在可能是将心理治疗干预形式化为学习的计算模型的好时机,以提高我们对心理治疗变化机制的理解。为了推进研究并帮助建立一个新的理论驱动的计算心理治疗联合领域,我们首先回顾了认知行为疗法(暴露疗法和认知重组)的文献,并介绍了强化学习和表征学习的计算模型。然后,我们建议将这些学习算法映射到变化过程中,这可能是暴露疗法和认知重构效应的基础。最后,我们概述了通过学习算法对干预措施的理解如何为干预研究提供信息。
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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