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A Rule and Graph-Based Approach for Targeted Identity Resolution on Policing Data

机译:基于规则和基于图形的Policing数据定位分辨率的方法

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In criminal records, intentional manipulation of data is prevalent to create ambiguous identity and mislead authorities. Registering data electronically can result in misspelled data, variations in naming order, case sensitive data and inconsistencies in abbreviations and terminology. Therefore, trying to obtain the true identity (or identities) of a suspect can be a challenge for law enforcement agencies. We have developed a targeted approach to identity resolution which uses a rule-based scoring system on physical and official identity attributes and a graph-based analysis on social identity attributes to interrogate policing data and resolve whether a specific target is using multiple identities. The approach has been tested on an anonymized policing dataset, used in the SPIRIT project, funded by the European Union’s Horizon 2020. The dataset contains four ‘known’ identities using a total of five false identities. 23 targets were inputted into the methodology with no knowledge of how many or which had false identities. The rule-based scoring system ranked four of the five false identities with the joint highest score for the relevant target name with the remaining false identity holding the joint second highest score for its target. Moreover, when using graph analysis, 51 suspected false identities were found for the 23 targets with four of the five false identities linked through the crimes they had been involved in. Therefore, an identity resolution approach using both a rule-based scoring system and graph analysis, could be effective in facilitating the investigation process for law enforcement agencies and assisting them in finding criminals using false identities.
机译:在犯罪记录中,故意操纵数据是普遍的,以创造含糊不清的身份和误导机构。以电子方式注册数据可能导致拼写错误的数据,命名顺序的变化,缩写和术语中的不一致状态和不一致。因此,试图获得嫌疑人的真实身份(或身份)可能是执法机构的挑战。我们已经开发了一个针对性分辨率的目标方法,它在物理和官方身份属性上使用了基于规则的评分系统以及关于社会识别属性的基于图形的分析,以询问警告数据并解决特定目标是否使用多个身份。该方法已经在由欧盟Horizo​​ n 2020资助的精神项目中使用的匿名政策数据集进行了测试。该数据集包含共有四个虚假身份的“已知”标识。 23个目标被输入到方法中,没有了解有多少或有虚假身份。基于规则的评分系统将相关目标名称的联合最高分数排名五个虚假身份中的四个,其剩余的虚假身份持有其目标的联合第二位得分。此外,在使用图形分析时,为23个目标找到了51个疑似虚假身份,其中包括通过涉及的罪行中的五个虚假身份中的四个目标。因此,使用基于规则的评分系统和图形的标识分析方法分析,可有效促进执法机构的调查过程,并协助他们使用虚假身份找到犯罪分子。

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