自我依恋治疗的移情人工智能教练

Lisa Alazraki, Ali Ghachem, Neophytos Polydorou, Foaad Khosmood, A. Edalat
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引用次数: 5

摘要

在这项工作中,我们提出了一个新的数据集和一个数字教练的计算策略,旨在指导用户实践自我依恋治疗的协议。我们的框架用深度学习分类器增强了基于规则的会话代理,用于识别用户文本响应中的潜在情感,以及深度学习辅助检索方法,用于生成新颖,流畅和移情的话语。我们还制作了一组类似人类的角色,用户可以选择与之交互。我们的目标是在虚拟治疗过程中实现高水平的参与。我们在一项有N=16名参与者的非临床试验中评估了我们的框架的有效性,所有参与者在五天的过程中至少有四次与该药物相互作用。我们发现,与简单的基于规则的框架相比,我们的平台在移情、用户参与度和实用性方面的评分始终更高。最后,根据收到的反馈,我们提供了进一步改进应用程序设计和性能的指导方针。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Empathetic AI Coach for Self-Attachment Therapy
In this work, we present a new dataset and a computational strategy for a digital coach that aims to guide users in practicing the protocols of self-attachment therapy. Our framework augments a rule-based conversational agent with a deep-learning classifier for identifying the underlying emotion in a user's text response, as well as a deep-learning assisted retrieval method for producing novel, fluent and empathetic utterances. We also craft a set of human-like personas that users can choose to interact with. Our goal is to achieve a high level of engagement during virtual therapy sessions. We evaluate the effectiveness of our framework in a non-clinical trial with N=16 participants, all of whom have had at least four interactions with the agent over the course of five days. We find that our platform is consistently rated higher for empathy, user engagement and usefulness than the simple rule-based framework. Finally, we provide guidelines to further improve the design and performance of the application, in accordance with the feedback received.
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