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Extracting relations of crime rates through fuzzy association rules mining

机译:通过模糊协会规则挖掘提取犯罪率关系

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摘要

Data mining is an important technology to reveal the patterns from crime data. Although there are many researches about this topic, less work models the relations between rates of different kinds of crime. In this paper, an algorithm based on fuzzy association rules (AR) mining is proposed to discover these relations. Two datasets, which are crimes in Chicago from 2012 to 2017 and crimes in NSW from 2008 to 2012, are used for case studies. At first, crime data is preprocessed, where every kind of crime occurring in every district during every month is counted. For a crime in a combination of district and month, the membership function, which is based on hypothesis testing, is designed to evaluate the degree to which its rate is high, normal or low, and the fuzzy transactional dataset is formed. A bridge between fuzzy transactional dataset and binary AR mining algorithm is built, so those mature tools of binary AR mining can be applied to generate fuzzy ARs. In the results of case studies, the strong relations between rates of different crime can be found. There are many interesting and surprise rules, which are worthy to be further studied by domain experts.
机译:数据挖掘是揭示犯罪数据模式的重要技术。虽然关于这一主题有很多研究,但较少的工作模型不同种类犯罪率之间的关系。本文提出了一种基于模糊关联规则(AR)挖掘的算法来发现这些关系。从2012年到2017年到2017年芝加哥犯罪的两个数据集和新南威尔士州南威尔士州的犯罪将用于案例研究。起初,犯罪数据是预处理的,其中每个月内每个地区发生的各种犯罪都被计算在内。对于在地区和月组合的犯罪,基于假设检测的会员函数旨在评估其速率高,正常或低的程度,并且形成模糊的事务数据集。构建了模糊交易数据集和二进制AR挖掘算法之间的桥梁,因此可以应用那些二进制AR挖掘的成熟工具来产生模糊ARS。在案例研究的结果中,可以找到不同犯罪率之间的强大关系。有许多有趣和惊喜的规则,这些规则值得通过域专家进一步研究。

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