Discovering High Influence Co-location Patterns from Spatial Data Sets

Lili Lei, Lizhen Wang, Yuming Zeng, Lanqing Zeng
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引用次数: 1

Abstract

The co-location pattern is a subset of spatial features that are frequently located together in spatial proximity. However, the traditional approaches only focus on the prevalence of patterns, and it cannot reflect the influence of patterns. In this paper, we are committed to address the problem of mining high influence co-location patterns. At first, we define the concepts of influence features and reference features. Based on these concepts, a series of definitions are introduced further to describe the influence co-location pattern. Secondly, a metric is designed to measure the influence degree of the influence co-location pattern, and a basic algorithm for mining high influence co-location patterns is presented. Then, according to the properties of the influence co-location pattern, the corresponding pruning strategy is proposed to improve the efficiency of the algorithm. At last, we conduct extensive experiments on synthetic and real data sets to test our approaches. Experimental results show that our approaches are effective and efficient to discover high influence co-location patterns.
从空间数据集中发现高影响力的同位模式
同位模式是空间特征的一个子集,这些空间特征经常在空间接近中位于一起。然而,传统的方法只关注模式的流行程度,而不能反映模式的影响。在本文中,我们致力于解决挖掘高影响力同址模式的问题。首先定义了影响特征和参考特征的概念。在这些概念的基础上,进一步引入了一系列定义来描述影响共位模式。其次,设计了一种度量影响共位模式影响程度的指标,提出了一种挖掘高影响共位模式的基本算法;然后,根据影响共定位模式的特性,提出相应的剪枝策略,提高算法的效率。最后,我们在合成数据集和真实数据集上进行了大量的实验来测试我们的方法。实验结果表明,该方法能够有效地发现高影响力的同位模式。
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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