犯罪数据电子治理的多元时间序列聚类新方法

B. Chandra, Manish Gupta
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引用次数: 3

摘要

近年来,由于多变量时间序列聚类在金融、环境、多媒体和犯罪等领域的广泛应用,引起了人们对多变量时间序列聚类研究的兴趣。由于MTS的每个数据对象都以矩阵的形式存在,传统的相似度度量如相关性、欧氏距离等无法用于MTS数据对象之间的相似度度量。虽然过去已经引入了一些相似度量,如动态时间规整(DTW)和扩展Frobenius范数(Eros),用于寻找MTS数据对象之间的相似性,但它们在执行MTS数据集聚类时要么计算成本高,要么效率低。本文提出了一种有效的相似性度量方法,该方法优于现有的相似性度量方法。本文还介绍了一种两阶段方法,用于多输入和多输出的犯罪数据的电子治理。第一阶段使用基于所提出的相似性度量的MTS聚类对对象进行同质分组,第二阶段使用Malmquist数据包络分析(DEA)模型对同质分组的性能进行度量。提出的MTS和两阶段方法的相似性度量可以应用于各种各样的现实世界的问题。印度的犯罪数据说明了拟议办法的有效性。首先,利用所提出的相似性度量方法进行MTS聚类,根据相似的犯罪趋势对不同的警察管理单位(PAUs)如州、区和警察局进行聚类。其次,利用数据包络分析(DEA)对犯罪预防措施的有效执行情况进行排名。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Novel Multivariate Time Series Clustering Approach for E-Governance of Crime Data
In recent past, there is an increased interest in multivariate time series (MTS) clustering research due to its wide applications in various areas such as finance, environmental research, multimedia and crime. The traditional similarity measures like correlation, Euclidean distance etc. cannot be applied to measure the similarity among data objects of MTS since every data object of MTS is in the form of a matrix. Although, some similarity measures like dynamic time warping (DTW), and extended Frobenius norm (Eros) have been introduced in the past for finding similarity among MTS data objects, they are either computationally expensive or inefficient for carrying out clustering of MTS datasets. In this paper, an efficient similarity measure has been introduced which outperforms the existing similarity measures. This paper also introduces a two phase methodology for e-governance of crime data with multiple inputs and multiple outputs. The first phase forms homogeneous groups of objects using MTS clustering based on the proposed similarity measure and the second phase measures the performance of homogeneous groups using Malmquist data envelopment analysis (DEA) model. The proposed similarity measure for MTS and two phase methodology can be applied to wide variety of real world problems. The effectiveness of the proposed approach has been illustrated on Indian crime data. Firstly, MTS clustering using proposed similarity measure is used to cluster various police administration units (PAUs) such as states, districts and police stations based on similar crime trends. Secondly, PAUs are ranked on the basis of their effective enforcement of crime prevention measures using Data Envelopment Analysis (DEA).
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