DECOMPOSITION OF REPULSIVE CLUSTERS IN COMPLEX POINT PROCESSES WITH HETEROGENEOUS COMPONENTS

Decomposition of Repulsive Clusters in Complex Point Processes with Heterogeneous Components

Decomposition of Repulsive Clusters in Complex Point Processes with Heterogeneous Components

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The decomposition of a point process is useful for the analysis of spatial patterns and in the discovery of potential mechanisms of geographic phenomena.However, when a local repulsive cluster is present in a complex heterogeneous point process, the traditional solution, which is based on clustering, may Step Platform be invalid for decomposition because a repulsive pattern is not subject to a specific probability distribution function and the effects of aggregative and repulsive components may be counterbalanced.To solve this problem, this paper proposes a method of decomposing repulsive clusters in complex point processes with multiple heterogeneous components.A repulsive cluster is defined as a set of repulsive density-connected points that are separated by a certain distance at a small Bunk Bed scale and aggregated at a large scale simultaneously.The H-function is used to identify repulsive clusters by determining the repulsive distance and extracting repulsive points for further clustering.

Through simulation experiments based on three datasets, the proposed method has been shown to effectively perform repulsive cluster decomposition in heterogeneous point processes.A case study of the point of interest (POI) dataset in Beijing also indicates that the method can identify meaningful repulsive clusters from types of POIs that represent different service characteristics of shops in different local regions.

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