LawLuo: A Multi-Agent Collaborative Framework for Multi-Round Chinese Legal Consultation
Legal Large Language Models (LLMs) have shown promise in providing legal consultations to non-experts. However, most existing Chinese legal consultation models are based on single-agent systems, which differ from real-world legal consultations, where multiple professionals collaborate to offer more...
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Zusammenfassung: | Legal Large Language Models (LLMs) have shown promise in providing legal
consultations to non-experts. However, most existing Chinese legal consultation
models are based on single-agent systems, which differ from real-world legal
consultations, where multiple professionals collaborate to offer more tailored
responses. To better simulate real consultations, we propose LawLuo, a
multi-agent framework for multi-turn Chinese legal consultations. LawLuo
includes four agents: the receptionist agent, which assesses user intent and
selects a lawyer agent; the lawyer agent, which interacts with the user; the
secretary agent, which organizes conversation records and generates
consultation reports; and the boss agent, which evaluates the performance of
the lawyer and secretary agents to ensure optimal results. These agents'
interactions mimic the operations of real law firms. To train them to follow
different legal instructions, we developed distinct fine-tuning datasets. We
also introduce a case graph-based RAG to help the lawyer agent address vague
user inputs. Experimental results show that LawLuo outperforms baselines in
generating more personalized and professional responses, handling ambiguous
queries, and following legal instructions in multi-turn conversations. Our full
code and constructed datasets will be open-sourced upon paper acceptance. |
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DOI: | 10.48550/arxiv.2407.16252 |