The data revolution in justice

IF 5.4 1区 经济学 Q1 DEVELOPMENT STUDIES World Development Pub Date : 2024-11-18 DOI:10.1016/j.worlddev.2024.106834
Manuel Ramos-Maqueda , Daniel L. Chen
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Abstract

This article explores the transformative potential of data science in enhancing justice systems globally. Leveraging the increasing availability of judicial data and the advancements of the digital revolution, this paper demonstrates how policymakers can significantly improve access, efficiency, and fairness within justice systems—crucial components of economic development as discussed in a companion paper (Ramos-Maqueda and Chen, 2024). We introduce a comprehensive framework for evaluating, diagnosing, and experimenting with judicial processes to deepen our understanding of judicial performance using data science methodologies. Key areas of focus include the application of machine learning and “text-as-data” techniques to enhance efficiency and identify disparities in judicial rulings. Through detailed case studies and empirical evidence, we illustrate how these technologies can address systemic shortcomings and drive meaningful reforms. By identifying specific areas where data science can bridge existing gaps, we aim to provide actionable insights for policymakers. Our findings highlight the profound impact of data-driven approaches on fostering a more just society and promoting sustainable economic growth. The paper concludes by suggesting future research directions and practical applications of data science in judicial contexts to ensure continuous improvement and innovation.
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司法领域的数据革命
本文探讨了数据科学在加强全球司法系统方面的变革潜力。本文利用司法数据日益增长的可用性和数字革命的进步,展示了政策制定者如何在司法系统中显著改善司法的可及性、效率和公平性--这正是经济发展的重要组成部分,这一点在另一篇论文(Ramos-Maqueda and Chen, 2024)中已有论述。我们介绍了一个评估、诊断和试验司法程序的综合框架,以利用数据科学方法加深我们对司法绩效的理解。重点领域包括应用机器学习和 "文本即数据 "技术来提高效率和识别司法裁决中的差异。通过详细的案例研究和经验证据,我们说明了这些技术如何解决系统性缺陷并推动有意义的改革。通过确定数据科学可以弥补现有差距的具体领域,我们旨在为政策制定者提供可行的见解。我们的研究结果凸显了数据驱动方法对促进社会更加公正和推动可持续经济增长的深远影响。本文最后提出了数据科学在司法领域的未来研究方向和实际应用,以确保持续改进和创新。
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来源期刊
World Development
World Development Multiple-
CiteScore
12.70
自引率
5.80%
发文量
320
期刊介绍: World Development is a multi-disciplinary monthly journal of development studies. It seeks to explore ways of improving standards of living, and the human condition generally, by examining potential solutions to problems such as: poverty, unemployment, malnutrition, disease, lack of shelter, environmental degradation, inadequate scientific and technological resources, trade and payments imbalances, international debt, gender and ethnic discrimination, militarism and civil conflict, and lack of popular participation in economic and political life. Contributions offer constructive ideas and analysis, and highlight the lessons to be learned from the experiences of different nations, societies, and economies.
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