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STING : A Statistical Information Grid Approach to Spatial Data Mining

机译:STING:一种用于空间数据挖掘的统计信息网格方法

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Spatial data mining, i.e., discovery of interesting characteristics and patterns that may implicitly exist in spatial databases, is a challenging task due to the huge amounts of spatial data and to the new conceptual nature of the problems which must account for spatial distance. Clustering and region oriented queries are common problems in this domain. Several approaches have been presented in recent years, all of which require at least one scan of all individual objects (points). Consequently, the computational complexity is at least linearly proportional to the number of objects to answer each query. In this paper, we propose a hierarchical statistical information grid based approach for spatial data mining to reduce the cost further. The idea is to capture statistical information associated with spatial cells in such a manner that whole classes of queries and clustering problems can be answered without recourse to the individual objects. In theory, and confirmed by empirical studies, this approach outperforms the best previous method by at least an order of magnitude, especially when the data set is very large.
机译:空间数据挖掘,即发现可能隐含在空间数据库中的有趣特征和模式,由于大量的空间数据和必须考虑空间距离的问题的新概念性质,是一项具有挑战性的任务。群集和面向区域的查询是该领域的常见问题。近年来已经提出了几种方法,所有这些方法都需要对所有单个对象(点)进行至少一次扫描。因此,计算复杂度至少与要回答每个查询的对象数量成线性比例。在本文中,我们提出了一种基于分层统计信息网格的空间数据挖掘方法,以进一步降低成本。这个想法是要捕获与空间像元相关的统计信息,以使整个类别的查询和聚类问题都可以得到解决,而不必求助于单个对象。从理论上讲,经经验研究证实,这种方法至少比现有的最佳方法好一个数量级,尤其是在数据集非常大的情况下。

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