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An outlier-based data association method for linking criminal incidents

机译:基于异常值的犯罪事件关联数据关联方法

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摘要

Serial criminals are a major threat in the modern society. Associating incidents committed by the same offender is of great importance in studying serial criminals. In this paper, we present a new outlier-based approach to resolve this criminal incident association problem. In this approach, criminal incident data are first modeled into a number of cells, and then a measurement function, called outlier score function, is defined over these cells. Incidents in a cell are determined to be associated with each other when the score is significant enough. We applied our approach to a robbery dataset from Richmond, VA. Results show that this method can effectively solve the criminal incident association problem.
机译:连环罪犯是现代社会的主要威胁。将同一个罪犯所犯的事件联系起来对于研究连环犯罪者非常重要。在本文中,我们提出了一种新的基于异常值的方法来解决此犯罪事件关联问题。在这种方法中,首先将犯罪事件数据建模为多个单元,然后在这些单元上定义称为离群值得分函数的测量函数。当分数足够显着时,确定单元中的事件彼此关联。我们将方法应用于弗吉尼亚州里士满市的抢劫数据集。结果表明,该方法可以有效解决犯罪事件关联问题。

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