AUTOMATION OF LAW ENFORCEMENT: PROBLEMS AND SOLUTIONS USING MACHINE LEARNING AND MACHINE-READABLE LAW

The article explores the prospects for automating human activity in the application of law. The purpose of the study is to analyse the theoretical possibility of automating the law enforcement process through the use of modern information technologies and new approaches to the formation of law. The...

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Main Author: PEREVOZKIN Andrey Andreevich
Format: Article
Language:English
Published: Bashkir State University 2025-03-01
Series:Правовое государство: теория и практика
Subjects:
Online Access:https://pravgos.ru/index.php/journal/article/view/1093
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author PEREVOZKIN Andrey Andreevich
author_facet PEREVOZKIN Andrey Andreevich
author_sort PEREVOZKIN Andrey Andreevich
collection DOAJ
description The article explores the prospects for automating human activity in the application of law. The purpose of the study is to analyse the theoretical possibility of automating the law enforcement process through the use of modern information technologies and new approaches to the formation of law. The research methodology includes systematic approach, abstraction, analysis and synthesis. The author provides a list of fundamental problems that hinder automation of law enforcement, arising from the specifics of modern law, the process of its creation and application. Such problems include the lack of a single official database of sources of law, the imperfection of natural language, the need to use additional information about the world and society, etc. In addition, the article proposes possible solutions to these problems based on the application of machine learning and the introduction of machine-readable law. In particular, the author considers the use of neural networks for recognising printed text, vector models for organising semantic search through normative texts, large language models for performing cognitive operations and storing information about the world and society, computer vision systems for evaluating facts of objective reality. The author concludes that modern technologies and new approaches to the formation of law potentially allow, if not to achieve full automation of law enforcement, then significantly approach this goal.
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series Правовое государство: теория и практика
spelling doaj-art-b0305c36be13466e93acdbe2e5b27ed32025-08-20T02:16:48ZengBashkir State UniversityПравовое государство: теория и практика2500-02172025-03-01211(78)22723710.33184/pravgos-2025.1.25AUTOMATION OF LAW ENFORCEMENT: PROBLEMS AND SOLUTIONS USING MACHINE LEARNING AND MACHINE-READABLE LAWPEREVOZKIN Andrey Andreevich0https://orcid.org/0009-0004-3567-511XTyumen State UniversityThe article explores the prospects for automating human activity in the application of law. The purpose of the study is to analyse the theoretical possibility of automating the law enforcement process through the use of modern information technologies and new approaches to the formation of law. The research methodology includes systematic approach, abstraction, analysis and synthesis. The author provides a list of fundamental problems that hinder automation of law enforcement, arising from the specifics of modern law, the process of its creation and application. Such problems include the lack of a single official database of sources of law, the imperfection of natural language, the need to use additional information about the world and society, etc. In addition, the article proposes possible solutions to these problems based on the application of machine learning and the introduction of machine-readable law. In particular, the author considers the use of neural networks for recognising printed text, vector models for organising semantic search through normative texts, large language models for performing cognitive operations and storing information about the world and society, computer vision systems for evaluating facts of objective reality. The author concludes that modern technologies and new approaches to the formation of law potentially allow, if not to achieve full automation of law enforcement, then significantly approach this goal.https://pravgos.ru/index.php/journal/article/view/1093automation of law enforcementmachine-readable lawalgorithmisation of lawmachine learningartificial intelligencelarge language modelsneural networksinterpretation of lawsources of lawlegal uncertainty
spellingShingle PEREVOZKIN Andrey Andreevich
AUTOMATION OF LAW ENFORCEMENT: PROBLEMS AND SOLUTIONS USING MACHINE LEARNING AND MACHINE-READABLE LAW
Правовое государство: теория и практика
automation of law enforcement
machine-readable law
algorithmisation of law
machine learning
artificial intelligence
large language models
neural networks
interpretation of law
sources of law
legal uncertainty
title AUTOMATION OF LAW ENFORCEMENT: PROBLEMS AND SOLUTIONS USING MACHINE LEARNING AND MACHINE-READABLE LAW
title_full AUTOMATION OF LAW ENFORCEMENT: PROBLEMS AND SOLUTIONS USING MACHINE LEARNING AND MACHINE-READABLE LAW
title_fullStr AUTOMATION OF LAW ENFORCEMENT: PROBLEMS AND SOLUTIONS USING MACHINE LEARNING AND MACHINE-READABLE LAW
title_full_unstemmed AUTOMATION OF LAW ENFORCEMENT: PROBLEMS AND SOLUTIONS USING MACHINE LEARNING AND MACHINE-READABLE LAW
title_short AUTOMATION OF LAW ENFORCEMENT: PROBLEMS AND SOLUTIONS USING MACHINE LEARNING AND MACHINE-READABLE LAW
title_sort automation of law enforcement problems and solutions using machine learning and machine readable law
topic automation of law enforcement
machine-readable law
algorithmisation of law
machine learning
artificial intelligence
large language models
neural networks
interpretation of law
sources of law
legal uncertainty
url https://pravgos.ru/index.php/journal/article/view/1093
work_keys_str_mv AT perevozkinandreyandreevich automationoflawenforcementproblemsandsolutionsusingmachinelearningandmachinereadablelaw