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Main Authors: Xue, Dong, Tu, Jicheng, Wang, Ming, Yan, Xin, Liu, Fangzhou, Hu, Jie
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.01993
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author Xue, Dong
Tu, Jicheng
Wang, Ming
Yan, Xin
Liu, Fangzhou
Hu, Jie
author_facet Xue, Dong
Tu, Jicheng
Wang, Ming
Yan, Xin
Liu, Fangzhou
Hu, Jie
contents Large language models (LLMs) have shown promise for mental health support, yet training such models is constrained by the scarcity and sensitivity of real counseling dialogues. In this article, we present MindChat, a privacy-preserving LLM for mental health support, together with MindCorpus, a synthetic multi-turn counseling dataset constructed via a multi-agent role-playing framework. To synthesize high-quality counseling data, the developed dialogue-construction framework employs a dual closed-loop feedback design to integrate psychological expertise and counseling techniques through role-playing: (i) turn-level critique-and-revision to improve coherence and counseling appropriateness within a session, and (ii) session-level strategy refinement to progressively enrich counselor behaviors across sessions. To mitigate privacy risks under decentralized data ownership, we fine-tune the base model using federated learning with parameter-efficient LoRA adapters and incorporate differentially private optimization to reduce membership and memorization risks. Experiments on synthetic-data quality assessment and counseling capability evaluation show that MindCorpus improves training effectiveness and that MindChat is competitive with existing general and counseling-oriented LLM baselines under both automatic LLM-judge and human evaluation protocols, while exhibiting reduced privacy leakage under membership inference attacks.
format Preprint
id arxiv_https___arxiv_org_abs_2601_01993
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Towards Privacy-Preserving Mental Health Support with Large Language Models
Xue, Dong
Tu, Jicheng
Wang, Ming
Yan, Xin
Liu, Fangzhou
Hu, Jie
Artificial Intelligence
Large language models (LLMs) have shown promise for mental health support, yet training such models is constrained by the scarcity and sensitivity of real counseling dialogues. In this article, we present MindChat, a privacy-preserving LLM for mental health support, together with MindCorpus, a synthetic multi-turn counseling dataset constructed via a multi-agent role-playing framework. To synthesize high-quality counseling data, the developed dialogue-construction framework employs a dual closed-loop feedback design to integrate psychological expertise and counseling techniques through role-playing: (i) turn-level critique-and-revision to improve coherence and counseling appropriateness within a session, and (ii) session-level strategy refinement to progressively enrich counselor behaviors across sessions. To mitigate privacy risks under decentralized data ownership, we fine-tune the base model using federated learning with parameter-efficient LoRA adapters and incorporate differentially private optimization to reduce membership and memorization risks. Experiments on synthetic-data quality assessment and counseling capability evaluation show that MindCorpus improves training effectiveness and that MindChat is competitive with existing general and counseling-oriented LLM baselines under both automatic LLM-judge and human evaluation protocols, while exhibiting reduced privacy leakage under membership inference attacks.
title Towards Privacy-Preserving Mental Health Support with Large Language Models
topic Artificial Intelligence
url https://arxiv.org/abs/2601.01993