Aligning Human-AI-Interaction Trust for Mental Health Support: Survey and Position for Multi-Stakeholders
Xin Sun, Yue Su, Yifan Mo, Qingyu Meng, Yuxuan Li + 6 more
TLDR
This paper proposes a three-layer trust framework to align human-AI interaction trust for mental health support, bridging fragmented definitions.
Key contributions
- Introduces a three-layer trust framework for human-AI interaction in mental health, integrating diverse stakeholder views.
- Systematically reviews current AI mental health research and evaluation practices for trustworthiness.
- Identifies critical gaps between NLP metrics and real-world mental health requirements.
- Proposes a research agenda for building socio-technically aligned and genuinely trustworthy AI.
Why it matters
Current AI trust definitions for mental health are fragmented. This paper offers a comprehensive framework to unify stakeholder perspectives, guiding the development of genuinely trustworthy AI systems. It highlights critical gaps and outlines a clear research path.
Original Abstract
Building trustworthy AI systems for mental health support is a shared priority across stakeholders from multiple disciplines. However, "trustworthy" remains loosely defined and inconsistently operationalized. AI research often focuses on technical criteria (e.g., robustness, explainability, and safety), while therapeutic practitioners emphasize therapeutic fidelity (e.g., appropriateness, empathy, and long-term user outcomes). To bridge the fragmented landscape, we propose a three-layer trust framework, covering human-oriented, AI-oriented, and interaction-oriented trust, integrating the viewpoints of key stakeholders (e.g., practitioners, researchers, regulators). Using this framework, we systematically review existing AI-driven research in mental health domain and examine evaluation practices for ``trustworthy'' ranging from automatic metrics to clinically validated approaches. We highlight critical gaps between what NLP currently measures and what real-world mental health contexts require, and outline a research agenda for building socio-technically aligned and genuinely trustworthy AI for mental health support.
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