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首页> 外文期刊>International Journal of Geographical Information Science >Leveraging parallel spatio-temporal computing for crime analysis in large datasets: analyzing trends in near-repeat phenomenon of crime in cities
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Leveraging parallel spatio-temporal computing for crime analysis in large datasets: analyzing trends in near-repeat phenomenon of crime in cities

机译:在大型数据集中利用并行时空计算犯罪分析:分析城市犯罪近重复现象的趋势

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摘要

Crime often clusters in space and time. Near-repeat patterns improve understanding of crime communicability and their space-time interactions. Near-repeat analysis requires extensive computing resources for the assessment of statistical significance of space-time interactions. A computationally intensive Monte Carlo simulation-based approach is used to evaluate the statistical significance of the space-time patterns underlying near-repeat events. Currently available software for identifying near-repeat patterns is not scalable for large crime datasets. In this paper, we show how parallel spatial programming can help to leverage spatio-temporal simulation-based analysis in large datasets. A parallel near-repeat calculator was developed and a set of experiments were conducted to compare the newly developed software with an existing implementation, assess the performance gain due to parallel computation, test the scalability of the software to handle large crime datasets and assess the utility of the new software for real-world crime data analysis. Our experimental results suggest that, efficiently designed parallel algorithms that leverage high-performance computing along with performance optimization techniques could be used to develop software that are scalable with large datasets and could provide solutions for computationally intensive statistical simulation-based approaches in crime analysis.
机译:犯罪经常在空间和时间内集群。近重复模式提高了对犯罪通知的理解及其时空互动。近重复分析需要广泛的计算资源,以评估时空相互作用的统计显着性。基于计算密集的Monte Carlo仿真方法用于评估近重复事件底层的时空模式的统计显着性。目前可用的软件用于识别近repate模式对于大型犯罪数据集不可扩展。在本文中,我们展示了平行空间编程如何有助于利用大型数据集中的时空仿真的分析。开发了一个平行的近重复计算器,并进行了一组实验,以将新开发的软件与现有实现进行比较,评估由于并行计算引起的性能增益,测试软件的可扩展性以处理大型犯罪数据集并评估该实用程序关于现实世界犯罪数据分析的新软件。我们的实验结果表明,利用高性能计算以及性能优化技术的有效设计的并行算法可用于开发与大型数据集可扩展的软件,并可为基于计算密集的统计模拟的犯罪分析方法提供解决方案。

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