SAGE: A Strategy-Aware Graph-Enhanced Generation Framework For Online Counseling
arXiv cs.CL / 4/30/2026
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Key Points
- The paper introduces SAGE, a strategy-aware framework that augments general-purpose LLMs with clinically grounded reasoning for online mental health counseling.
- SAGE builds a heterogeneous graph combining conversational dynamics with a theory-based psychological lexicon, aiming to improve safety and therapeutic effectiveness.
- It uses a Next Strategy Classifier to select the optimal therapeutic intervention, then applies a Graph-Aware Attention mechanism to feed graph-structured signals into soft prompts for LLM response generation.
- Experimental validation via automated metrics and expert human evaluation shows SAGE outperforming baselines in both strategy prediction and recommended response quality.
- The authors position SAGE as a decision-support tool that can recommend interventions in high-stakes crisis counseling to complement human clinicians.
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