Multi-agent architectures based on large-scale low-generation language models for solving complex legal problems: A comparative study

Capa

Citar

Texto integral

Acesso aberto Acesso aberto
Acesso é fechado Acesso está concedido
Acesso é fechado Acesso é pago ou somente para assinantes

Resumo

This article presents a comparative analysis of five multi-agent architectures based on large, low-generation language models for solving complex legal problems. The study was conducted on a specially prepared dataset of 25 questions of five difficulty levels on Russian family and civil law. Architectures of varying complexity were tested: from a simple lawyer-agent to extended ensembles with a dispatcher and a "jury" system. The main evaluation metrics were the average response quality score, token consumption, economic cost, and efficiency coefficient. The results revealed significant differences between the architectures: Option 5 demonstrated the best quality (6.44 points), but Option 1 proved the most effective with a coefficient of 49.46. Complex architectures required 10-15 times more tokens with an insignificant increase in quality. Analysis by complexity levels revealed that multi-agent systems are most effective for problematic situations and conflicts of laws, while simpler architectures are sufficient for typical tasks. The study provides scientifically based recommendations for selecting optimal architectural solutions for legal advisory systems, balancing quality and cost-effectiveness.

Texto integral

Acesso é fechado

Sobre autores

Roman Dushkin

Scientific Research Nuclear University of MEPhI

Autor responsável pela correspondência
Email: drv@aia.expert
Código SPIN: 1371-0337

senior lecturer at Department 22 “Cybernetics”

Rússia, Moscow

Vladimir Podoprigora

Plekhanov Russian University of Economics

Email: Podoprigora.VN@rea.ru
ORCID ID: 0000-0001-6485-8135
Código SPIN: 9587-1028

Cand. Sci. (Econ.), head of the laboratory

Rússia, Moscow

Alexey Kuzmin

Ecosystem Digital Solutions LLC

Email: a.kuzmin@edisai.tech
ORCID ID: 0009-0008-7264-2455

General Director

Rússia, Moscow

Kirill Dushkin

LLC "A-Ya expert"

Email: dkr@aia.expert

analyst

Rússia, Moscow

Bibliografia

  1. Guo T. Large language model based multi-agents: A survey of progress and challenges / T. Guo, X. Chen, Y. Wang, R. Chang, S. Pei // arXiv preprint arXiv:2402.01680. URL: https://arxiv.org/abs/2402.01680 (date accessed: 23.06.2025).
  2. Dushkin R.V., Andronov M.G. Hybrid design of artificial intelligent systems. Cybernetics and Programming. 2019. No. 4. Pp. 51–58. (In Rus.). doi: 10.25136/2644-5522.2019.4.29809. EDN: OKAMBF.
  3. Binyamin S.S. Multi-agent systems for resource allocation and scheduling in a smart grid / S. S. Binyamin, S. Ben Slama // Sensors. 2022. URL: https://www.mdpi.com/1424-8220/22/21/8099 (date accessed: 23.06.2025).

Arquivos suplementares

Arquivos suplementares
Ação
1. JATS XML
2. Fig. 1. Average ratings of MAS architectures.

Baixar (82KB)
3. Fig. 2. Token consumption by various MAC architectures.

Baixar (93KB)
4. Fig. 3. Efficiency coefficient of WT architectures.

Baixar (82KB)

Declaração de direitos autorais © Yur-VAK, 2025

Creative Commons License
Este artigo é disponível sob a Licença Creative Commons Atribuição–NãoComercial–SemDerivações 4.0 Internacional.