Avisha Das


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2022

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Conversational Bots for Psychotherapy: A Study of Generative Transformer Models Using Domain-specific Dialogues
Avisha Das | Salih Selek | Alia R. Warner | Xu Zuo | Yan Hu | Vipina Kuttichi Keloth | Jianfu Li | W. Jim Zheng | Hua Xu
Proceedings of the 21st Workshop on Biomedical Language Processing

Conversational bots have become non-traditional methods for therapy among individuals suffering from psychological illnesses. Leveraging deep neural generative language models, we propose a deep trainable neural conversational model for therapy-oriented response generation. We leverage transfer learning methods during training on therapy and counseling based data from Reddit and AlexanderStreet. This was done to adapt existing generative models – GPT2 and DialoGPT – to the task of automated dialog generation. Through quantitative evaluation of the linguistic quality, we observe that the dialog generation model - DialoGPT (345M) with transfer learning on video data attains scores similar to a human response baseline. However, human evaluation of responses by conversational bots show mostly signs of generic advice or information sharing instead of therapeutic interaction.