A density-based spatial clustering for physical constraints

作者:Xin Wang, Camilo Rostoker, Howard J. Hamilton

摘要

We propose a spatial clustering method, called DBRS+, which aims to cluster spatial data in the presence of both obstacles and facilitators. It can handle datasets with intersected obstacles and facilitators. Without preprocessing, DBRS+ processes constraints during clustering. It can find clusters with arbitrary shapes. DBRS+ has been empirically evaluated using synthetic and real data sets and its performance has been compared to DBRS and three related methods for handling obstacles, namely AUTOCLUST+, DBCLuC*, and DBRS_O.

论文关键词:Spatial data mining, Constraint-based clustering, Density-based clustering, Obstacle, Facilitator

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论文官网地址:https://doi.org/10.1007/s10844-011-0154-7