HCCLOct 24, 2023

Facilitating Self-Guided Mental Health Interventions Through Human-Language Model Interaction: A Case Study of Cognitive Restructuring

UW
arXiv:2310.15461v2129 citationsh-index: 17
Originality Incremental advance
AI Analysis

This addresses accessibility barriers in mental health care for users of self-guided tools, though it is incremental as it builds on existing therapeutic techniques with language model integration.

The study tackled the problem of self-guided mental health interventions being cognitively demanding and emotionally triggering by using language models to support cognitive restructuring, resulting in positive emotional impacts for 67% of participants and helping 65% overcome negative thoughts.

Self-guided mental health interventions, such as "do-it-yourself" tools to learn and practice coping strategies, show great promise to improve access to mental health care. However, these interventions are often cognitively demanding and emotionally triggering, creating accessibility barriers that limit their wide-scale implementation and adoption. In this paper, we study how human-language model interaction can support self-guided mental health interventions. We take cognitive restructuring, an evidence-based therapeutic technique to overcome negative thinking, as a case study. In an IRB-approved randomized field study on a large mental health website with 15,531 participants, we design and evaluate a system that uses language models to support people through various steps of cognitive restructuring. Our findings reveal that our system positively impacts emotional intensity for 67% of participants and helps 65% overcome negative thoughts. Although adolescents report relatively worse outcomes, we find that tailored interventions that simplify language model generations improve overall effectiveness and equity.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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