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Clustering constrained on linear networks

机译:线性网络约束的聚类

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摘要

An unsupervised classification method for point events occurring on a geometric network is proposed. The idea relies on the distributional flexibility and practicality of random partition models to discover the clustering structure featuring observations from a particular phenomenon taking place on a given set of edges. By incorporating the spatial effect in the random partition distribution, induced by a Dirichlet process, one is able to control the distance between edges and events, thus leading to an appealing clustering method. A Gibbs sampler algorithm is proposed and evaluated with a sensitivity analysis. The proposal is motivated and illustrated by the analysis of crime and violence patterns in Mexico City.
机译:该文提出一种针对几何网络上发生的点事件的无监督分类方法。这个想法依赖于随机分区模型的分布灵活性和实用性来发现聚类结构,其特点是从给定的一组边上发生的特定现象中观察到的。通过将空间效应纳入由狄利克雷过程引起的随机分区分布中,人们能够控制边和事件之间的距离,从而产生一种吸引人的聚类方法。提出了一种吉布斯采样器算法,并通过灵敏度分析对其进行了评估。该提案的动机和说明是对墨西哥城犯罪和暴力模式的分析。

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