Xiyao Xiao
2025
MAGI: Multi-Agent Guided Interview for Psychiatric Assessment
Guanqun Bi
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Zhuang Chen
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Zhoufu Liu
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Hongkai Wang
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Xiyao Xiao
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Yuqiang Xie
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Wen Zhang
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Yongkang Huang
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Yuxuan Chen
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Libiao Peng
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Minlie Huang
Findings of the Association for Computational Linguistics: ACL 2025
Automating structured clinical interviews could revolutionize mental healthcare accessibility, yet existing large language models (LLMs) approaches fail to align with psychiatric diagnostic protocols. We present MAGI, the first framework that transforms the gold-standard Mini International Neuropsychiatric Interview (MINI) into automatic computational workflows through coordinated multi-agent collaboration. MAGI dynamically navigates clinical logic via four specialized agents: 1) an interview tree guided navigation agent adhering to the MINI’s branching structure, 2) an adaptive question agent blending diagnostic probing, explaining, and empathy, 3) a judgment agent validating whether the response from participants meet the node, and 4) a diagnosis Agent generating Psychometric Chain-of- Thought (PsyCoT) traces that explicitly map symptoms to clinical criteria. Experimental results on 1,002 real-world participants covering depression, generalized anxiety, social anxiety and suicide shows that MAGI advances LLM- assisted mental health assessment by combining clinical rigor, conversational adaptability, and explainable reasoning.
2024
CharacterGLM: Customizing Social Characters with Large Language Models
Jinfeng Zhou
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Zhuang Chen
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Dazhen Wan
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Bosi Wen
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Yi Song
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Jifan Yu
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Yongkang Huang
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Pei Ke
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Guanqun Bi
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Libiao Peng
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JiaMing Yang
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Xiyao Xiao
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Sahand Sabour
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Xiaohan Zhang
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Wenjing Hou
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Yijia Zhang
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Yuxiao Dong
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Hongning Wang
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Jie Tang
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Minlie Huang
Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing: Industry Track
Character-based dialogue (CharacterDial) has become essential in the industry (e.g., Character.AI), enabling users to freely customize social characters for social interactions. However, the generalizability and adaptability across various conversational scenarios inherent in customizing social characters still lack public industrial solutions. To address these challenges, by dissecting well-rounded social characters composed of both inherent social profiles and external social behaviors, we manually collect a large-scale Chinese corpus featuring characters with diverse categories and behaviors, and develop CharacterGLM models alongside well-designed refinement methods. Extensive experiments show that CharacterGLM outperforms most popular open- and closed-source LLMs and performs comparably to GPT-4. We will release our data and models for local development and deployment.
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- Guanqun Bi 2
- Zhuang Chen 2
- Yongkang Huang 2
- Minlie Huang 2
- Libiao Peng 2
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