犯罪网络可视化框架

Amer Rasheed, U. Wiil, M. Niazi
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引用次数: 6

摘要

任何重大犯罪活动的背后都有一个周密的阴谋。对犯罪网络研究人员来说,探测和理解犯罪活动一直是一项具有挑战性的任务。解决这些挑战的一个重要方法是将犯罪网络可视化。我们提出了一个名为PEVNET的框架,在该框架中,现有的犯罪网络可视化技术从不同的角度进行了重新设计。通过实体属性的合并、链接和分组,为犯罪网络侦查人员提供了可视化特征。此外,我们认为,通过检测基于时间数据的犯罪活动可视化分析提取的不断变化的网络模式,可以在很大程度上消除当前对信息可视化的挑战。最后,提出的框架将以独特的方式显示网络中最核心的人,这将支持调查人员的决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PEVNET: A framework for visualization of criminal networks
No major criminal activity is possible without a comprehensive plot behind it. Detecting and understanding criminal activity has been a challenging task for the researchers in criminal networks. One important way of addressing those challenges has been visualization of criminal networks. We propose a framework called PEVNET in which existing visualization techniques for criminal networks are re-designed from a different perspective. Visualization features by way of merging, linking, and grouping of entity attributes is provided to criminal network investigators. Furthermore, we believe that the prevailing challenges to information visualization can be eliminated to a large extent by detecting evolving network patterns, which are extracted by way of visual analysis of criminal activity based on temporal data. Finally, the proposed framework will indicate the most central person in the network in a unique way, which will support the investigators' decision making.
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