首页> 外文会议>International Workshop on Intelligence and Security Informatics(WISI 2006); 20060409; Singapore(SG) >Mining Criminal Databases to Finding Investigation Clues—By Example of Stolen Automobiles Database
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Mining Criminal Databases to Finding Investigation Clues—By Example of Stolen Automobiles Database

机译:挖掘犯罪数据库以寻找侦查线索-以被盗汽车数据库为例

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摘要

While businesses have been extensively using data mining to pursue everlasting prosperity, we seldom consider this technique in public affairs. The government holds a large quantity of data that are records of official operations or private information of the people. These data can be used for increasing benefits of the people or enhancing the efficiency of governmental operations. In this paper we will apply this technique to the data of stolen automobiles to explore the unknown knowledge hidden in the data and provide this knowledge to transportation, insurance as well as law enforcement for decision supports. The data we use are abstracted from 378 thousand records of stolen automobiles in the past eleven years in Taiwan. After constructing a data warehouse, we apply the technique of classification, association rule, prediction, data generalization and summarization-based characterization to discover new knowledge. Our results include the understanding of automotive theft, possibility of finding stolen automobiles, intrigue in theft claims, etc. The knowledge we acquired is useful in decision support, showing the applicability of data mining in public affairs. The experience we gathered in this study would help the use of this technique in other public sectors. Along with the research results, we suggest the law enforcement to consider data mining as a new means to investigate criminal cases, to set up a team of criminal data analysis, to launch a new program to crack down automotive thefts, and to improve the quality of criminal data management.
机译:尽管企业已经广泛地使用数据挖掘来追求持久的繁荣,但我们很少在公共事务中考虑这种技术。政府拥有大量数据,这些数据是官方活动记录或人民的私人信息。这些数据可用于增加人民的利益或提高政府运作的效率。在本文中,我们将这种技术应用于被盗汽车的数据中,以探索隐藏在数据中的未知知识,并将其提供给运输,保险和执法部门以提供决策支持。我们使用的数据摘自过去11年台湾地区的37.8万笔被盗汽车记录。在构建数据仓库之后,我们应用分类,关联规则,预测,数据概括和基于摘要的表征技术来发现新知识。我们的结果包括对汽车盗窃的了解,发现被盗汽车的可能性,对盗窃索赔的阴谋等。我们获得的知识可用于决策支持,显示数据挖掘在公共事务中的适用性。我们在这项研究中收集的经验将有助于在其他公共部门中使用该技术。结合研究结果,我们建议执法部门将数据挖掘视为调查犯罪案件的新方法,成立犯罪数据分析团队,启动一项新的计划来打击汽车盗窃并提高质量犯罪数据管理。

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