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arXiv 提交日期: 2026-06-03
📄 Abstract - When Clients Stop Following: A Cognitive Conceptualization Diagram-driven Framework for Strategic Counseling

Large Language Models (LLMs) show promise in psychological counseling, yet existing benchmarks rely heavily on highly cooperative simulated clients. We observe a critical counselor-following phenomenon: these clients often rapidly shift from resistance to compliance after only a few turns, creating an illusion of therapeutic progress and inflating scores under current evaluation protocols through superficial empathy. To address this evaluation mismatch, we propose a Cognitive Behavioral Therapy (CBT)-grounded resistance-aware framework. We introduce CARS, a client simulator that explicitly models dynamic resistance via Cognitive Conceptualization Diagrams (CCDs). We present STREAMS, a dual-module framework that decouples strategic reasoning (Thinker) from response generation (Presenter) and optimizes it via reinforcement learning. We further propose EWTS-MI, an entropy-weighted metric for evaluating responsiveness under high-friction interactions. Experiments across resistant and non-resistant counseling settings validate our findings on evaluation mismatch and demonstrate the effectiveness of resistance-aware training for improving strategic robustness under challenging counseling interactions.

顶级标签: llm agents medical
详细标签: psychological counseling cognitive behavioral therapy client simulation strategic reasoning reinforcement learning 或 搜索:

当来访者不再顺从:基于认知概念化图的策略性心理咨询框架 / When Clients Stop Following: A Cognitive Conceptualization Diagram-driven Framework for Strategic Counseling


1️⃣ 一句话总结

本文指出现有的AI心理咨询评测存在漏洞——模拟来访者过于配合,导致评估失真,并提出一套基于认知行为疗法的新框架,通过模拟真实抵抗行为、分离思考与表达模块,以及设计对抗性评估指标,来训练和评估AI咨询师应对“难缠”来访者的能力。

源自 arXiv: 2606.04389