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Spatial Entropy-Based Clustering for Mining Data with Spatial Correlation

机译:基于空间熵的聚类,用于空间相关性的挖掘数据

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Due to the inherent characteristics of spatial datasets, spatial clustering methods need to consider spatial attributes, non-spatial attributes and spatial correlation among non-spatial attributes across space. However, most existing spatial clustering methods ignore spatial correlation, considering spatial and non-spatial attributes independently. In this paper, we first prove that spatial entropy is a monotonic decreasing function for non-spatial attribute similarity and spatial correlation. Then we propose a novel density-based spatial clustering method called SEClu, which applies spatial entropy in measuring non-spatial attribute similarity and spatial correlation during the clustering process. The experimental results from both the synthetic data and the real application demonstrate that SEClu can effectively identify spatial clusters with spatial correlated patterns.
机译:由于空间数据集的固有特征,空间聚类方法需要考虑跨空间的非空间属性之间的空间属性,非空间属性和空间相关性。然而,大多数现有的空间聚类方法忽略了空间相关性,考虑独立地考虑空间和非空间属性。在本文中,我们首先证明空间熵是非空间属性相似性和空间相关性的单调逐渐减小功能。然后,我们提出一种名为SECLU的基于新的基于密度的空间聚类方法,其在聚类过程中施加空间熵在测量非空间属性相似性和空间相关性。合成数据和实际应用的实验结果表明SECLU可以有效地识别具有空间相关图案的空间簇。

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