Towards automated recommendations for drunk driving penalties in Poland - a case study analysis in selected court

IF 1.8 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Foundations of Computing and Decision Sciences Pub Date : 2023-12-01 DOI:10.2478/fcds-2023-0019
Karolina Kiejnich-Kruk, Mateusz Twardawa, P. Formanowicz
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Abstract

Abstract Depending on the legal system, judges may have varying degrees of discretion in determining the type and extent of sentence that can be imposed for a particular offence. Nevertheless, it appears that even in systems traditionally considered discretionary, accepted patterns play a significant role in determining penalties, and judges utilize merely a limited spectrum of potential penalties in repetitive cases. Confirmation of the predictability of sentencing in certain categories of cases facilitates the possibility of automation. Utilising a computer program to assist judges in sentencing proposals based on input is feasible. This program can reflect the standard practice of sentencing penalties and punitive measures in a particular category of cases or rectify it, depending on the adopted sentencing policy. The objective of the article is to present findings from research that investigated whether a specific relation shapes the dimension of penalties and penal measures for cases concerning driving under the influence of alcohol in Poland, in the context of possible automation of the sentencing process. Another aim of this study is to provide an example of a straightforward mathematical recommendation model that tries to reflect both the discovered correlations in the data and the presumed intentions of legislators.
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波兰醉驾处罚的自动化建议--对部分法院的案例研究分析
摘要 根据不同的法律制度,法官在决定对某一特定罪行可判处的刑罚类型和程度时可能会有不同程度的自由裁量权。然而,即使在传统上被认为是自由裁量权的制度中,公认的模式似乎也在确定刑罚方面发挥着重要作用,法官在重复性案件中使用的潜在刑罚范围有限。对某些类别案件量刑可预测性的确认有助于实现自动化的可能性。利用电脑程序协助法官根据输入信息提出量刑建议是可行的。根据所采用的量刑政策,该程序可反映特定类别案件中量刑和惩罚措施的标准做法,或对其进行修正。本文的目的是在量刑程序可能实现自动化的背景下,介绍对波兰酒后驾驶案件的刑罚和惩罚措施是否受特定关系影响的研究结果。本研究的另一个目的是提供一个简单明了的数学建议模型实例,该模型试图反映数据中发现的相关性和立法者的假定意图。
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来源期刊
Foundations of Computing and Decision Sciences
Foundations of Computing and Decision Sciences COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
2.20
自引率
9.10%
发文量
16
审稿时长
29 weeks
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