Data First: Criminal Courts Linked Data research report.

IF 1.6 Q3 HEALTH CARE SCIENCES & SERVICES
Georgina Eaton, Kylie Hill, A. Summerfield
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引用次数: 2

Abstract

ObjectivesThe Ministry of Justice’s pioneering data linking programme Data First, funded by Administrative Data Research UK, links administrative datasets across the justice system and with other government departments to enable research providing critical new insights on justice system users, their pathways, and outcomes across a range of public services. ApproachThe first two datasets shared under the Data First project are magistrates’ courts and Crown Court data which have been deidentified, deduplicated and linked to provide a joined-up picture of criminal court defendant and case journeys. Accredited researchers can access this data using the ONS Secure Research Service to conduct research. Administrative Data Research UK has funded four Research Fellows to conduct analysis using this linked data. Additionally, analysts within the Ministry of Justice Data First team have published a research report showcasing the potential of the linked criminal courts data. The presentation will primarily focus on this work. ResultsThe Data First criminal courts datasets have enabled, for the first time, the extent and nature of repeat users to be explored at scale for research. In March 2022, the Ministry of Justice published exploratory analysis of returning defendants and the potential of linked criminal courts data. The key findings of this report will be covered in the presentation. The research demonstrates more than half of defendants returned to the courts within the data period, but this was highest for specific offence groups, including theft, robbery and drug offences. Locality-based analysis on Crown Court defendants highlights important insights on the backgrounds of justice system users, showing an over-representation of defendants residing in the most deprived areas in England and Wales compared to the general population. ConclusionThe presentation will demonstrate how linked administrative data available through the ground-breaking Data First programme can be effectively used for research. This insight improves our understanding of individuals in the justice system as well as providing a rich resource to develop the evidence base for government policy and practice.
数据为先:刑事法院关联数据研究报告。
目的司法部开创性的数据链接计划data First由英国行政数据研究所资助,将整个司法系统和其他政府部门的行政数据集链接起来,使研究能够对司法系统用户、他们的途径和一系列公共服务的结果提供关键的新见解。方法数据优先项目下共享的前两个数据集是治安法院和刑事法院的数据,这些数据经过去标识、去重复和链接,以提供刑事法院被告和案件旅程的联合图像。经过认证的研究人员可以使用国家统计局的安全研究服务访问这些数据进行研究。英国行政数据研究所资助了四名研究员使用这些关联数据进行分析。此外,司法部数据第一团队的分析师发表了一份研究报告,展示了相关刑事法院数据的潜力。演讲将主要集中在这项工作上。结果数据优先刑事法院数据集首次使重复用户的范围和性质能够得到大规模的研究。2022年3月,司法部发布了对返回被告的探索性分析以及相关刑事法院数据的潜力。本报告的主要结论将在介绍中介绍。研究表明,超过一半的被告在数据期内重返法庭,但这一数字在特定犯罪群体中最高,包括盗窃、抢劫和毒品犯罪。对刑事法院被告的基于地区的分析突出了对司法系统用户背景的重要见解,显示与普通人群相比,居住在英格兰和威尔士最贫困地区的被告比例过高。结论该演示文稿将展示如何通过开创性的数据优先方案获得的相关行政数据可以有效地用于研究。这一见解提高了我们对司法系统中个人的理解,并为政府政策和实践提供了丰富的证据基础。
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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来源期刊
CiteScore
2.50
自引率
0.00%
发文量
386
审稿时长
20 weeks
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