Evidence-Driven Marker Extraction for Social Media Suicide Risk Detection
Journal:
arXiv
Published Date:
Feb 26, 2025
Abstract
Early detection of suicide risk from social media text is crucial for timely
intervention. While Large Language Models (LLMs) offer promising capabilities
in this domain, challenges remain in terms of interpretability and
computational efficiency. This paper introduces Evidence-Driven LLM (ED-LLM), a
novel approach for clinical marker extraction and suicide risk classification.
ED-LLM employs a multi-task learning framework, jointly training a Mistral-7B
based model to identify clinical marker spans and classify suicide risk levels.
This evidence-driven strategy enhances interpretability by explicitly
highlighting textual evidence supporting risk assessments. Evaluated on the
CLPsych datasets, ED-LLM demonstrates competitive performance in risk
classification and superior capability in clinical marker span identification
compared to baselines including fine-tuned LLMs, traditional machine learning,
and prompt-based methods. The results highlight the effectiveness of multi-task
learning for interpretable and efficient LLM-based suicide risk assessment,
paving the way for clinically relevant applications.