A Dual-Prompting for Interpretable Mental Health Language Models

Proceedings of the Ninth Workshop on Computational Linguistics and Clinical Psychology 2024 Despite the increasing demand for AI-based mental health monitoring tools, their practical utility for clinicians is limited by the lack of interpretability.The CLPsych 2024 Shared Task (Chim et al., 2024) ai...

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Hauptverfasser: Jeon, Hyolim, Yoo, Dongje, Lee, Daeun, Son, Sejung, Kim, Seungbae, Han, Jinyoung
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Sprache:eng
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Zusammenfassung:Proceedings of the Ninth Workshop on Computational Linguistics and Clinical Psychology 2024 Despite the increasing demand for AI-based mental health monitoring tools, their practical utility for clinicians is limited by the lack of interpretability.The CLPsych 2024 Shared Task (Chim et al., 2024) aims to enhance the interpretability of Large Language Models (LLMs), particularly in mental health analysis, by providing evidence of suicidality through linguistic content. We propose a dual-prompting approach: (i) Knowledge-aware evidence extraction by leveraging the expert identity and a suicide dictionary with a mental health-specific LLM; and (ii) Evidence summarization by employing an LLM-based consistency evaluator. Comprehensive experiments demonstrate the effectiveness of combining domain-specific information, revealing performance improvements and the approach's potential to aid clinicians in assessing mental state progression.
DOI:10.48550/arxiv.2402.14854