加强斯瓦蒂尼的公共安全:一个机器学习驱动的预测警务模型

IF 3 Q1 PSYCHOLOGY, MULTIDISCIPLINARY
Lucky T. Tsabedze, Boluwaji A. Akinnuwesi, Banele Dlamini, Elliot Mbunge, Stephen G. Fashoto, Olusola Olabanjo, Petros Mashwama, Andile S. Metfula, Madoda Nxumalo, Bukola Badeji-Ajisafe, Grace Egenti
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引用次数: 0

摘要

公共安全仍然是斯瓦蒂尼的一个关键问题,因为它可以预防犯罪,减少反应机制的延迟,并优化警察资源。本研究将机器学习技术应用于Eswatini王国(前斯威士兰)的预测性警务,以改善主动执法策略和公共安全。犯罪在许多社会都是一个挑战,并继续威胁着公共安全、社会凝聚力和经济发展。执法人员经常使用被动的方法来处理犯罪事件,这通常与各种障碍有关,例如对犯罪事件的反应迟缓、资源密集的行动、受害和不充分的主动预防犯罪措施。将机器学习技术集成到预测性警务中,成为有效警务和预防犯罪的新灵丹妙药。然而,缺乏通过预测性警务倡导前瞻性警务的文献。因此,本研究通过使用机器学习模型,如XGBoost、随机森林、多层感知器(MLP)和k近邻(KNN)模型,提出了一种主动预测和预防犯罪的方法。这些模型使用来自皇家斯瓦蒂尼警察局(REPS)的数据进行了训练和测试。我们的研究结果表明,XGBoost提供了最高的预测准确度,约为71.4%,精度范围为0.65至0.81,召回率范围为0.34至0.81,使其成为跨指标平衡性能的首选模型。随机森林的准确率为66.2%,而MLP和KNN的准确率分别为62.2%和55.5%。该研究建议整合基于情报的模型,以增强主动犯罪预测和识别潜在的犯罪热点。这有助于优化资源分配,以预防犯罪。此外,包括国家安全机构、政策制定者和社区在内的利益相关者之间的合作对于有效采用和利用预测性警务技术来加强安全行动至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Enhancing Public Safety in Eswatini: A Machine Learning–Driven Predictive Policing Model

Enhancing Public Safety in Eswatini: A Machine Learning–Driven Predictive Policing Model

Public safety remains a critical concern in Eswatini, as it prevents crime, reduces delayed response mechanisms, and optimizes police resources. This study applied machine learning techniques in predictive policing within the Kingdom of Eswatini (formerly Swaziland) to improve proactive law enforcement strategies and public safety. Crime has been a challenge in many societies and continues to threaten public safety, social cohesion, and economic development. Law enforcement agents often use reactive approaches to handle criminal incidents, which are generally associated with various impediments, such as delayed responses to crime incidents, resource-intensive operations, victimization, and insufficient proactive crime prevention measures. Integrating machine learning techniques for predictive policing emerges as a new panacea for effective policing and crime prevention. However, there is a dearth of literature advocating proactive policing through predictive policing. Therefore, this study proposes a proactive approach to crime prediction and prevention by using machine learning models such as XGBoost, random forest, multilayer perceptron (MLP), and K-nearest neighbors (KNN) models. These models were trained and tested using data from the Royal Eswatini Police Services (REPS). Our findings indicate that XGBoost provides the highest predictive accuracy at approximately 71.4%, with precision ranging from 0.65 to 0.81 and recall from 0.34 to 0.81, making it the preferred model for balanced performance across the metrics. Random forest recorded an accuracy of 66.2%, while MLP and KNN have 62.2% and 55.5% accuracy, respectively. The study recommends the integration of intelligence-based models to enhance proactive crime prediction and identify potential crime hotspots. This can assist in optimizing resource allocation to prevent crime. Additionally, collaboration among stakeholders, including national security agents, policymakers, and the community, is essential to effectively adopt and utilize predictive policing technologies to enhance security operations.

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来源期刊
Human Behavior and Emerging Technologies
Human Behavior and Emerging Technologies Social Sciences-Social Sciences (all)
CiteScore
17.20
自引率
8.70%
发文量
73
期刊介绍: Human Behavior and Emerging Technologies is an interdisciplinary journal dedicated to publishing high-impact research that enhances understanding of the complex interactions between diverse human behavior and emerging digital technologies.
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