占星家:基于历史数据预测犯罪人口

Md.Atiqur Rahman, A. A. Islam
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引用次数: 0

摘要

由于计算机技术的迅速发展,警察执法机构现在能够保存包含有关犯罪的具体信息的庞大数据库。这些数据库可以用来分析犯罪模式、犯罪特征以及罪犯和受害者的人口统计数据。通过将各种机器学习算法应用于这些数据集,可以生成可以协助警方进行调查的决策辅助系统。当有大量的数据可访问时,也可以使用几种数据驱动的深度学习方法。在本次调查的范围内,我们的主要目标是创建一个可以在标准调查过程中使用的工具。为了利用犯罪证据数据和受害者人口统计数据预测犯罪人口统计特征,我们提出了一种基于深度分解机器的深度神经网络架构。我们评估了我们的架构与传统机器学习算法和深度学习算法的性能,并在比较研究中提供了我们的发现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cri-Astrologer: Predicting Demography of Involved Criminals based on Historical Data
Because of the rapid advancement in computer technology, police enforcement agencies are now able to keep enormous databases that contain specific information about crimes. These databases can be utilized to analyze crime patterns, criminal characteristics, and the demographics of both criminals and victims. Through the application of various machine learning algorithms to these datasets, it is possible to generate decision-aid systems that can assist in the conduct of police investigations. When there is a large amount of data accessible, several data-driven deep learning approaches can also be utilized. Within the scope of this investigation, our primary objective is to create a tool that may be utilized during the standard investigative process. To forecast criminal demographic profiles using crime evidence data and victim demographics, we present a deep factorization machine-based DNN architecture. We evaluate the performance of our architecture in comparison to that of traditional machine learning algorithms and deep learning algorithms, and we provide our findings in a comparative study.
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