基于动态参数的区域共定位模式发现

Mete Celik, James M. Kang, S. Shekhar
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引用次数: 76

摘要

区域共定位模式表示特征类型的子集,这些特征类型通常位于空间的子集(即区域)中。在生态、公共卫生和国土防御等领域,发现地带性空间共定位模式是一个重要的问题。然而,由于重复的挖掘过程,发现这些具有动态参数的模式(即根据用户偏好重复指定区域和兴趣度量值)在计算上是复杂的。此外,候选模式集的特征类型数量呈指数级增长,空间数据集非常庞大。以往的研究主要集中在发现具有固定兴趣测量阈值的全球空间共位模式。在本文中,我们提出了一种共定位模式的索引结构,并提出了一种算法(Zoloc-Miner)来有效地发现动态参数的区域共定位模式。广泛的实验评估表明,我们提出的方法是可扩展的,高效的,并且优于朴素的替代方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Zonal Co-location Pattern Discovery with Dynamic Parameters
Zonal co-location patterns represent subsets of feature- types that are frequently located in a subset of space (i.e., zone). Discovering zonal spatial co-location patterns is an important problem with many applications in areas such as ecology, public health, and homeland defense. However, discovering these patterns with dynamic parameters (i.e., repeated specification of zone and interest measure values according to user preferences) is computationally complex due to the repetitive mining process. Also, the set of candidate patterns is exponential in the number of feature types, and spatial datasets are huge. Previous studies have focused on discovering global spatial co-location patterns with a fixed interest measure threshold. In this paper, we propose an indexing structure for co-location patterns and propose algorithms (Zoloc-Miner) to discover zonal co- location patterns efficiently for dynamic parameters. Extensive experimental evaluation shows our proposed approaches are scalable, efficient, and outperform naive alternatives.
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