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Geospatial Crime Analysis to Determine Crime Density Using Kernel Density Estimation for the Indian Context

机译:地理空间犯罪分析确定印度语境中核密度估计的犯罪密度

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摘要

Crime is the most common social problem faced in a developing country. Crime affects the reputation of a nation and the quality of life of its citizens. Crime also affects the economy of the country, increasing the financial burden of the government due to the need for expenditure in the police force and judicial system. Various initiatives are taken by law enforcement to reduce the crime rate. One such initiative, real-time accurate crime predictions can help reduce the occurrence of crime. In this paper, a crime analytics platform is developed, which processes newsfeed data analysis for different types of crimes and identify crime hotspots using Kernel Density Estimation method. This system enables criminologists to understand the hidden relationships between crime and geographical locations. Interactive visualization features are available that enable law enforcement agencies to predict crime.
机译:犯罪是发展中国家面临的最常见的社会问题。 犯罪影响了一个国家的声誉和公民的生活质量。 犯罪也影响了该国的经济,由于警察部队和司法系统的支出需求,增加政府的财务负担。 执法部门采取了各种举措,以减少犯罪率。 一种这样的倡议,实时准确的犯罪预测可以帮助减少犯罪的发生。 在本文中,开发了犯罪分析平台,使用内核密度估计方法处理不同类型的犯罪和识别犯罪热点的新闻相关数据分析。 该系统使犯罪学家能够了解犯罪和地理位置之间的隐藏关系。 可以使用互动可视化功能,以使执法机构能够预测犯罪。

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