Mining Significant Co-Location Patterns From Spatial Regional Objects

yurong Long, Peizhong Yang, Lizhen Wang
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Abstract

A co-location pattern refers to the subset of features which frequently appear together in spatial proximity. There are many literatures studied the approach of discovering co-location patterns. However, a lot of proposed approaches need some thresholds given by the user, and it is difficult to give the proper thresholds. Moreover, most proposed approaches treat the spatial object as a point during the mining process, but spatial objects are dynamic or appear in the form of a cluster normally, which means that their locations are polygons rather than points. This paper provides a novel framework to mine co-location patterns from spatial regional objects. At first, we redefine the interest measure of significant co-locations. In our framework, the user does not need to specify any threshold, and the redefined interest measure is monotonically non-increasing which can be used for improving the mining efficiency. Then, an algorithm based on the grid partition is proposed to reduce time complexity further. Finally, we verify the efficiency and effectiveness of the proposed approach by extensive experiments.
从空间区域对象中挖掘重要的同位模式
同位模式是指在空间接近中经常一起出现的特征子集。许多文献研究了共位模式的发现方法。然而,许多已提出的方法需要用户给出一些阈值,很难给出合适的阈值。此外,大多数提出的方法在挖掘过程中将空间对象视为一个点,但空间对象通常是动态的或以簇的形式出现,这意味着它们的位置是多边形而不是点。本文提供了一种从空间区域对象中挖掘同位模式的新框架。首先,我们重新定义了显著共置的兴趣度量。在我们的框架中,用户不需要指定任何阈值,并且重新定义的兴趣度量是单调不增加的,可以用于提高挖掘效率。然后,提出了一种基于网格划分的算法,进一步降低了时间复杂度。最后,通过大量的实验验证了该方法的有效性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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