CPsyCoun: A Report-based Multi-turn Dialogue Reconstruction and Evaluation Framework for Chinese Psychological Counseling
Using large language models (LLMs) to assist psychological counseling is a significant but challenging task at present. Attempts have been made on improving empathetic conversations or acting as effective assistants in the treatment with LLMs. However, the existing datasets lack consulting knowledge...
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Zusammenfassung: | Using large language models (LLMs) to assist psychological counseling is a
significant but challenging task at present. Attempts have been made on
improving empathetic conversations or acting as effective assistants in the
treatment with LLMs. However, the existing datasets lack consulting knowledge,
resulting in LLMs lacking professional consulting competence. Moreover, how to
automatically evaluate multi-turn dialogues within the counseling process
remains an understudied area. To bridge the gap, we propose CPsyCoun, a
report-based multi-turn dialogue reconstruction and evaluation framework for
Chinese psychological counseling. To fully exploit psychological counseling
reports, a two-phase approach is devised to construct high-quality dialogues
while a comprehensive evaluation benchmark is developed for the effective
automatic evaluation of multi-turn psychological consultations. Competitive
experimental results demonstrate the effectiveness of our proposed framework in
psychological counseling. We open-source the datasets and model for future
research at https://github.com/CAS-SIAT-XinHai/CPsyCoun |
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DOI: | 10.48550/arxiv.2405.16433 |