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Journal Article

Citation

Gupta MK, Mohapatra S, Mahanta PK. Indian J. Community Med. 2022; 47(4): 483-490.

Copyright

(Copyright © 2022, Indian Association of Preventive and Social Medicine, Publisher MedKnow)

DOI

10.4103/ijcm.ijcm_1061_21

PMID

36742966

PMCID

PMC9891039

Abstract

BACKGROUND: Not only in India but also worldwide, criminal activity has dramatically increasing day by day among youth, and it must be addressed properly to maintain a healthy society. This review is focused on risk factors and quantitative approach to determine delinquent behaviors of juveniles.

MATERIALS AND METHODS: A total of 15 research articles were identified through Google search as per inclusion and exclusion criteria, which were based on machine learning (ML) and statistical models to assess the delinquent behavior and risk factors of juveniles.

RESULTS: The result found ML is a new route for detecting delinquent behavioral patterns. However, statistical methods have used commonly as the quantitative approach for assessing delinquent behaviors and risk factors among juveniles.

CONCLUSIONS: In the current scenario, ML is a new approach of computer-assisted techniques have potentiality to predict values of behavioral, psychological/mental, and associated risk factors for early diagnosis in teenagers in short of times, to prevent unwanted, maladaptive behaviors, and to provide appropriate intervention and build a safe peaceful society.

Keywords: Juvenile justice


Language: en

Keywords

machine learning; Delinquent behavior; juvenile-delinquency; risk-factors

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