多模式监视和决策支持的犯罪网络分析

P. Seidler, R. Adderley, A. Badii, Matteo Raffaelli
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引用次数: 2

摘要

随着受监视的社会系统的复杂性的增加,对自动化工具的需求也在增长,这些工具能够支持最终用户从可用数据和传入数据流的数量中理解情景上下文。本文介绍了MOSAIC(多模态态势评估和分析平台),这是一个语义集成系统,旨在利用多模态数据分析,包括用于文本和数据挖掘、犯罪网络分析和决策支持的先进工具。其目的是在丰富的背景下提供对受监督系统行为的理解,从而支持当局的决策过程。已经开发了具体的措施和算法,以支持分析人员检索,分析和破坏犯罪网络,识别与特定领域策略一致的造成最大伤害的罪犯,以及对干预策略进行调查。为了说明该系统在实际中的应用,本文给出了一个案例分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MOSAIC: Criminal network analysis for multi-modal surveillance and decision support
With increasing complexity of the social systems under surveillance, demand grows for automated tools which are able to support end users in making sense of situational context from the amount of available data and incoming data streams. This paper presents MOSAIC (Multi-Modal Situation Assessment and Analytics Platform), a semantically integrated system which aims at exploiting multi-modal data analysis comprising advanced tools for text and data mining, criminal network analysis, and decision support. The aim is to provide, from an enriched context, an understanding of behaviour of the system under surveillance thus supporting authorities in their decision making processes. Specific measures and algorithms have been developed to support analysts in retrieving, analysing, and disrupting criminal networks, identifying offenders that pose the greatest harm aligned with domain-specific strategies, as well as enabling the investigation of intervention strategies. A case study is provided in order to illustrate the system in practice.
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