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The use of data mining techniques in crime trend analysis and offender profiling

机译:数据挖掘技术在犯罪趋势分析和罪犯分析中的应用

摘要

The aim of this project is to ascertain whether the data in existing Police recording systems can be used by existing mature data mining techniques in an efficient manner to achieve results that are more accurate than those achieved by Police specialists when analysing crime. The Police Service has no formalised methodology of recording and analysing crime data and it is incumbent on each Force to train and develop appropriate personnel to provide operational analysis. Police data is inconsistent and, frequently, incomplete making the task of formal analysis far more difficult and current analytical practices are semi-manual and time consuming producing results of limited accuracy. These analytical processes would benefit from using data mining techniques within a structured approach as discussed within this thesis. The usage of supervised and unsupervised learning techniques within a structured methodology to mining Police data is evaluated. The research demonstrates that data mining techniques can be successfully used in operational policing. High volume crimes such as burglary that have been committed by one or more known offenders can be classified and the model used to attribute currently undetected crimes to one or more of those known offenders. Burglary crimes that previously had no overt relationship and the identity of the offender is unknown can be clustered with the ability to suggest one or more offenders who may be responsible for committing the crime. The same techniques used in analysing high volume crime can be used to link low volume major crimes such as serious sexual assaults. The recognised benefits include an improvement in the accuracy of results over current semi-manual processes and a reduction in the time taken to achieve those results.
机译:该项目的目的是确定现有警察记录系统中的数据是否可以由现有的成熟数据挖掘技术有效地使用,以实现比分析犯罪时由警察专家获得的结果更准确的结果。警察局没有记录和分析犯罪数据的正规方法,每个部队都有责任训练和培养适当的人员以提供业务分析。警察数据不一致,并且经常不完整,这使得正式分析的任务更加困难,并且当前的分析实践是半手动且耗时的,产生的结果精度有限。这些分析过程将受益于本论文中讨论的结构化方法中使用数据挖掘技术。评估了结构化方法中监督和非监督学习技术在挖掘警察数据中的使用情况。研究表明,数据挖掘技术可以成功地用于运营警务中。可以对一个或多个已知罪犯所犯的大量犯罪(例如入室盗窃)进行分类,并使用该模型将当前未发现的犯罪归因于一个或多个已知罪犯。以前没有公开关系且罪犯身份不明的入室行窃犯罪可以聚在一起,并建议一个或多个可能对犯罪负责的罪犯。用于分析高犯罪率的相同技术可以用于将低犯罪率的重大犯罪(例如严重的性侵犯)联系起来。公认的好处包括:与当前的半手动流程相比,结果的准确性有所提高,并且减少了获得这些结果所需的时间。

著录项

  • 作者

    Adderley Richard;

  • 作者单位
  • 年度 2007
  • 总页数
  • 原文格式 PDF
  • 正文语种 English
  • 中图分类

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