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Computing Co-Location Patterns in Spatial Data with Extended Objects: A Scalable Buffer-Based Approach

机译:使用扩展对象计算空间数据中的共同位置模式:基于缓冲的基于缓冲的方法

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摘要

Spatial co-location patterns are subsets of spatial features usually located together in geographic space. Recent literature has provided different approaches to discover co-location patterns over point spatial data. However, most approaches consider the neighborhood relationship among spatial objects as binary and are mainly designed for point spatial features, thus are not appropriate for extended spatial features such as line strings and polygons, the neighborhood relationship among which is naturally continuous. This paper adopts a buffer-based model for measuring the spatial relationship of extended objects and mining co-location patterns. While the buffer-based model has several advantages for extended spatial features, it involves high computational complexity due to the expensive buffer-level overlay operation. To tackle this challenge, we introduce a coarse-level co-location mining framework, which follows a filter-and-refine paradigm. Within the framework, we develop a serious of rigorous upper bounds based on geometric property and progressively prune search space with these upper bounds. Moreover, we develop a join-less schema to further reduce computation cost of size-k(k > 2) co-location patterns. Finally, we conduct experiments with large-scale spatial data to validate the efficiency of the developed algorithms against several state-of-art methods. All experimental results demonstrate the superiority of our methods.
机译:空间共同定位模式是通常在地理空间中一起定位的空间特征的子集。最近的文献提供了不同的方法来发现在点空间数据上的共同定位模式。然而,大多数方法认为空间物体之间的邻域关系作为二进制文件,并且主要设计用于点空间特征,因此不适用于诸如线条和多边形的延长空间特征,邻域关系自然连续。本文采用基于缓冲的模型,用于测量扩展对象和挖掘共同定位模式的空间关系。虽然基于缓冲的模型具有延长空间特征的几个优点,但由于昂贵的缓冲级覆盖操作,它涉及高计算复杂性。为了解决这一挑战,我们介绍了一个粗级的共同位置挖掘框架,它遵循滤波器和细化范例。在框架内,我们基于几何属性和逐步的剪枝搜索空间培养了严谨的上限,并使用这些上限。此外,我们开发了更少的架构,以进一步降低大小-K(k> 2)共定位模式的计算成本。最后,我们对大规模空间数据进行实验,以验证发达算法的效率,针对几种最先进的方法。所有实验结果表明了我们的方法的优越性。

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