Mental health counseling remains a major challenge in modern society due to cost, stigma, fear, and unavailability. We posit that generative artificial intelligence (AI) models designed for mental health counseling could help improve outcomes by lowering barriers to access. To this end, we have developed a deep learning (DL) dialogue system called Serena. The system consists of a core generative model and post-processing algorithms. The core generative model is a 2.7 billion parameter Seq2Seq Transformer fine-tuned on thousands of transcripts of person-centered-therapy (PCT) sessions. The series of post-processing algorithms detects contradictions, improves coherency, and removes repetitive answers. Serena is implemented and deployed on \url{https://serena.chat}, which currently offers limited free services. While the dialogue system is capable of responding in a qualitatively empathetic and engaging manner, occasionally it displays hallucination and long-term incoherence. Overall, we demonstrate that a deep learning mental health dialogue system has the potential to provide a low-cost and effective complement to traditional human counselors with less barriers to access.
翻译:由于成本、耻辱、恐惧和缺乏,心理健康咨询仍然是现代社会的一大挑战。我们认为,为心理健康咨询设计的基因人工智能(AI)模型可以通过降低获取障碍来帮助改善结果。为此目的,我们开发了一个叫塞雷纳的深层次学习(DL)对话系统。该系统由核心基因模型和后处理算法组成。核心基因模型是一个27亿参数Seq2Seqeq变异器,对数千次人-以人-以方治疗(PCT)会议的记录进行微调。一系列后处理算法发现矛盾,改善一致性,并消除重复性回答。Serena被安装在目前提供有限免费服务的\url{https://serena.chat}上。虽然对话系统能够以质的同情和接触方式作出反应,但有时会显示幻觉和长期的不连贯。总体而言,我们证明深学习的心理健康对话系统有可能为传统的人类顾问提供成本低、有效的补充,而接触障碍较少。