CLAICYFeb 5, 2024

Psychological Assessments with Large Language Models: A Privacy-Focused and Cost-Effective Approach

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arXiv:2402.03435v1104 citationsh-index: 38Has CodeCLPsych
AI Analysis

It addresses psychological assessment needs for researchers and clinicians by offering an incremental method that enhances data privacy and reduces computational costs.

This study used open-source large language models to analyze Reddit comments for identifying excerpts and summarizing content to support preassigned suicidal risk assessments, achieving outstanding evaluation metrics with a privacy-focused and cost-effective approach.

This study explores the use of Large Language Models (LLMs) to analyze text comments from Reddit users, aiming to achieve two primary objectives: firstly, to pinpoint critical excerpts that support a predefined psychological assessment of suicidal risk; and secondly, to summarize the material to substantiate the preassigned suicidal risk level. The work is circumscribed to the use of "open-source" LLMs that can be run locally, thereby enhancing data privacy. Furthermore, it prioritizes models with low computational requirements, making it accessible to both individuals and institutions operating on limited computing budgets. The implemented strategy only relies on a carefully crafted prompt and a grammar to guide the LLM's text completion. Despite its simplicity, the evaluation metrics show outstanding results, making it a valuable privacy-focused and cost-effective approach. This work is part of the Computational Linguistics and Clinical Psychology (CLPsych) 2024 shared task.

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