Machine Learning for Early Mental Health Support and Offenders Correction

Nelly Elsayed, Zag ElSayed, Murat Ozer
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引用次数: 0

Abstract

The effective rehabilitation and supervision of law offenders are vital to promoting community safety and enabling individuals to reintegrate into society. Community supervision presents several challenges for agencies like the Adult Parole Authority (APA), which must oversee individuals released from prisons under various forms of supervision, including courtesy supervision for different counties and interstate compact cases. With such a large number of individuals under supervision, the APA struggles to provide adequate oversight and support to guide individuals towards positive behavioral changes and reduce the risk of recidivism. To address these challenges, this paper proposes a machine learning-based system designed to monitor and support individuals under community supervision. The model would track various indicators to identify individuals at risk of self-harm or harming others and enable the APA to provide timely and appropriate support to these individuals. Improving the monitoring and support offered during the rehabilitation and supervision period would enhance the effectiveness of community supervision and contribute to safer and more stable communities.
早期心理健康支持和罪犯矫正的机器学习
对违法者进行有效的改造和监管,对促进社区安全和使个人重新融入社会至关重要。社区监督给成人假释管理局(APA)这样的机构带来了一些挑战,他们必须在各种形式的监督下监督从监狱释放的个人,包括对不同县和州际契约案件的礼貌监督。有这么多的人在监督之下,美国心理协会努力提供足够的监督和支持,引导个人朝着积极的行为改变,减少再犯的风险。为了解决这些挑战,本文提出了一个基于机器学习的系统,旨在监测和支持社区监督下的个人。该模型将跟踪各种指标,以识别有自残或伤害他人风险的个人,并使APA能够为这些个人提供及时和适当的支持。改善在恢复和监督期间提供的监测和支助将提高社区监督的效力,并有助于建立更安全和更稳定的社区。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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