Evolution of the capabilities of large language models in the legal field: Meta-analysis of four experimental studies
- Autores: Dushkin R.V.1, Podoprigora V.N.2, Kuzmin A.A.3, Dushkin K.R.4
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Afiliações:
- National Research Nuclear University “MEPhI”
- Plekhanov Russian University of Economics
- Ecosystem Digital Solutions LLC
- A-Ya expert LLC
- Edição: Volume 12, Nº 3 (2025)
- Páginas: 209-220
- Seção: LARGE LANGUAGE MODELS IN LEGAL PRACTICE
- URL: https://bakhtiniada.ru/2313-223X/article/view/350202
- DOI: https://doi.org/10.33693/2313-223X-2025-12-3-209-220
- EDN: https://elibrary.ru/CBJQVM
- ID: 350202
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Resumo
This paper presents a meta-analysis of four experimental studies from the Norm! project, aimed at systematically studying the effectiveness of large language models in the legal field. The study includes a comparative analysis of junior and senior models, optimization of system prompts, and testing of multi-agent architectures on tasks in Russian family and civil law. A key discovery was the identification of a nonlinear relationship between architectural complexity and the quality of results: the transition from simple to complex systems provides a slight increase in quality (15–40%) with an exponential increase in resource costs (by a factor of 10–15). The flagship models GPT-4.1 and Gemini 2.5 Pro demonstrate superior quality (9.04 and 8.52 points), but junior LLMs with efficiency coefficients up to 130.3 remain cost-effective. A universal problem area for all architectures is tasks requiring an integrative analysis of multiple legal norms. The results form scientifically sound recommendations for various implementation scenarios: from mass consulting services to specialized legal applications, defining the prospects for the development of hybrid architectures in legal practice.
Texto integral
##article.viewOnOriginalSite##Sobre autores
Roman Dushkin
National Research Nuclear University “MEPhI”
Autor responsável pela correspondência
Email: drv@aia.expert
ORCID ID: 0000-0003-4789-0736
Código SPIN: 1371-0337
senior lecturer, Department 22 “Cybernetics”
Rússia, MoscowVladimir 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, MoscowAlexey Kuzmin
Ecosystem Digital Solutions LLC
Email: a.kuzmin@edisai.tech
general director
Rússia, MoscowKirill Dushkin
A-Ya expert LLC
Email: dkr@aia.expert
analyst
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