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PsychAgent:経験駆動型生涯学習エージェントによる自己進化型心理カウンセラー
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ポイント
- AI心理カウンセラーの能力向上を目指し、経験に基づく生涯学習エージェントPsychAgentを提案した。
- 人間の専門家のように臨床経験から学習する能力をAIに与え、継続的なカウンセリングの質向上に貢献する。
- 実験の結果、PsychAgentはGPT-4やGemini-3などの汎用LLMを上回る性能を示し、生涯学習の有効性を示唆した。
Abstract
Existing methods for AI psychological counselors predominantly rely on supervised fine-tuning using static dialogue datasets. However, this contrasts with human experts, who continuously refine their proficiency through clinical practice and accumulated experience. To bridge this gap, we propose an Experience-Driven Lifelong Learning Agent (texttt{PsychAgent}) for psychological counseling. First, we establish a Memory-Augmented Planning Engine tailored for longitudinal multi-session interactions, which ensures therapeutic continuity through persistent memory and strategic planning. Second, to support self-evolution, we design a Skill Evolution Engine that extracts new practice-grounded skills from historical counseling trajectories. Finally, we introduce a Reinforced Internalization Engine that integrates the evolved skills into the model via rejection fine-tuning, aiming to improve performance across diverse scenarios. Comparative analysis shows that our approach achieves higher scores than strong general LLMs (e.g., GPT-5.4, Gemini-3) and domain-specific baselines across all reported evaluation dimensions. These results suggest that lifelong learning can improve the consistency and overall quality of multi-session counseling responses.
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