Applying the risk-need-responsivity model in juvenile offender treatment: A conceptual framework
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https://doi.org/10.58414/SCIENTIFICTEMPER.2024.15.spl-2.04Keywords:
Juvenile delinquency, Offender treatment, The RNR model, Juvenile justice system.Dimensions Badge
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Juvenile crime in India is a pressing issue that requires tailored rehabilitation approaches. This paper explores the application of the "Risk-Need-Responsivity (RNR) model" as a conceptual model for treating juvenile offenders within the Indian legal context. The study reviews correctional practices and highlights the need for structured offender treatment based on the 'RNR model's' core principles of 'risk,' 'need,' and 'responsivity.' Drawing on criminological theories and empirical evidence, the paper emphasizes the significance of addressing criminogenic factors to reduce recidivism. By analyzing existing literature on juvenile justice, the paper demonstrates how the RNR model, typically employed in Western contexts, can be adapted for India's socio-cultural environment to enhance the effectiveness of juvenile rehabilitation. The findings suggest that integrating RNR-informed interventions into the juvenile justice system can improve long-term rehabilitation outcomes and reduce re-offense rates among young offenders.Abstract
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