首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >Fuzzy geographically weighted clustering using artificial bee colony: An efficient geo-demographic analysis algorithm and applications to the analysis of crime behavior in population
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Fuzzy geographically weighted clustering using artificial bee colony: An efficient geo-demographic analysis algorithm and applications to the analysis of crime behavior in population

机译:使用人工蜂群的模糊地理加权聚类:一种有效的人口统计分析算法及其在人口犯罪行为分析中的应用

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Geo-demographic analysis is an essential part of a geographical information system (GIS) for predicting people's behavior based on statistical models and their residential location. Fuzzy Geographically Weighted Clustering (FGWC) serves as one of the most efficient algorithms in geo-demographic analysis. Despite being an effective algorithm, FGWC is sensitive to initialize when the random selection of cluster centers makes the iterative process falling into the local optimal solution easily. Artificial Bee Colony (ABC), one of the most popular meta-heuristic algorithms, can be regarded as the tool to achieve global optimization solutions. This research aims to propose a novel geo-demographic analysis algorithm that integrates FGWC to the optimization scheme of ABC for improving geo-demographic clustering accuracy. Experimental results on various datasets show that the clustering quality of the proposed algorithm called FGWC-ABC is better than those of other relevant methods. The proposed algorithm is also applied to a decision-making application for analyzing crime behavior problem in the population using the US communities and crime dataset. It provides fuzzy rules to determine the violent crime rate in terms of linguistic labels from socioeconomic variables. These results are significant to make predictions of further US violent crime rate and to facilitate appropriate decisions on prevention such the situations in the future.
机译:地理人口分析是地理信息系统(GIS)的重要组成部分,该信息系统用于基于统计模型及其居住位置来预测人们的行为。模糊地理加权聚类(FGWC)是地理人口分析中最有效的算法之一。尽管是一种有效的算法,但是当集群中心的随机选择使迭代过程容易陷入局部最优解时,FGWC仍然很容易初始化。人工蜂群(ABC)是最流行的元启发式算法之一,可以视为实现全局优化解决方案的工具。本研究旨在提出一种新颖的地物人口统计分析算法,该算法将FGWC集成到ABC的优化方案中,以提高地物人口统计聚类的准确性。在各种数据集上的实验结果表明,所提出的算法FGWC-ABC的聚类质量优于其他相关方法。所提出的算法还被应用于使用美国社区和犯罪数据集分析人口中犯罪行为问题的决策应用程序。它提供了模糊规则,可以根据社会经济变量的语言标签确定暴力犯罪率。这些结果对于预测美国进一步的暴力犯罪率以及为将来做出预防此类情况的适当决定提供重要依据。

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