cs.AI updates on arXiv.org 09月23日
基于LLM与MIL的心理健康认知扭曲检测框架
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本文提出一种结合大型语言模型(LLM)与多实例学习(MIL)架构的框架,用于心理健康领域的认知扭曲自动检测。通过分解言语为情感、逻辑和行为(ELB)成分,并利用LLM推断多个扭曲实例,最后通过多视图门控注意力机制进行分类,实验结果表明该框架有效提升了分类性能。

arXiv:2509.17292v1 Announce Type: cross Abstract: Cognitive distortions have been closely linked to mental health disorders, yet their automatic detection remained challenging due to contextual ambiguity, co-occurrence, and semantic overlap. We proposed a novel framework that combines Large Language Models (LLMs) with Multiple-Instance Learning (MIL) architecture to enhance interpretability and expression-level reasoning. Each utterance was decomposed into Emotion, Logic, and Behavior (ELB) components, which were processed by LLMs to infer multiple distortion instances, each with a predicted type, expression, and model-assigned salience score. These instances were integrated via a Multi-View Gated Attention mechanism for final classification. Experiments on Korean (KoACD) and English (Therapist QA) datasets demonstrate that incorporating ELB and LLM-inferred salience scores improves classification performance, especially for distortions with high interpretive ambiguity. Our results suggested a psychologically grounded and generalizable approach for fine-grained reasoning in mental health NLP.

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认知扭曲 心理健康 LLM 多实例学习 NLP
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