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Scale space based on clustering method integrating spatial relationships and non-spatial attributes

机译:基于集群方法集成空间关系和非空间属性的缩放空间

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With the widespread use of spatial data technologies, enormous and complex spatial data have been accumulated, thus the traditional GIS (Geographic Information Systems) spatial analysis methods are confronted with great challenges. Therefore, we need a new spatial analysis method of data-driven rather than model-driven, exploratory rather than reasoning. Spatial clustering, which groups similar spatial objects into classes such that the intra-cluster similarity is maximized and the inter-cluster similarity is minimized, is an important method of spatial data mining. In the article, by virtue of Delaunay diagram, we propose a spatial clustering algorithm, which incorporates spatial relationships with non-spatial attribute. Then the objects whose characters are less obvious are classified into clusters that are more obvious and the precondition is that they are neighbouring, namely they must share the same Delaunay edge. Along with rescaling, the same spatial object presents different states of distribution. We show via experiment of a synthetic data set that our algorithm can integrate spatial relationships and non-spatial attribute. The obtained clustering result is highly consistent with that perceived by human eyes and is capable of recognizing clusters of arbitrary shape.
机译:随着空间数据技术的广泛使用,累积了巨大和复杂的空间数据,因此传统的GIS(地理信息系统)空间分析方法面临着巨大的挑战。因此,我们需要一种数据驱动的新空间分析方法,而不是模型驱动,探索而不是推理。空间聚类,将类似的空间对象分组到类中,使得集群内相似度最大化并且群集间相似性最小化,是空间数据挖掘的重要方法。在文章中,凭借Delaunay图,我们提出了一种空间聚类算法,该算法包含与非空间属性的空间关系。然后,字符不太明显的对象被分类为更明显的集群,并且前提是它们是邻近的,即它们必须共享相同的delaunay边缘。除了重新扫描之外,相同的空间对象呈现出不同的分布状态。我们通过Synoletic Data Set的实验显示了我们的算法可以集成空间关系和非空间属性。所获得的聚类结果与人眼感知高度一致,并且能够识别任意形状的簇。

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