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首页> 外文期刊>Annals of the American Association of Geographers >ESCIP: An Expansion-Based Spatial Clustering Method for Inhomogeneous Point Processes
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ESCIP: An Expansion-Based Spatial Clustering Method for Inhomogeneous Point Processes

机译:ESCIP:用于不均匀点过程的基于扩展的空间聚类方法

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摘要

Detecting irregularly shaped spatial clusters within heterogeneous point processes is challenging because the number of potential clusters with different sizes and shapes can be enormous. This research develops a novel method, expansion-based spatial clustering for inhomogeneous point processes (ESCIP), for detecting spatial clusters of any shape within a heterogeneous point process in the context of analyzing spatial big data. Statistical testing is used to find core points-points with neighboring areas that have significantly more cases than the expectation-and an expansion approach is developed to find irregularly shaped clusters by connecting nearby core points. Instead of employing a brute-force search for all potential clusters, as done in the spatial scan statistics, this approach only requires testing a small neighboring area for each potential core point. Moreover, spatial indexing is leveraged to speed up the search for nearby points and the expansion of clusters. The proposed method is implemented with Poisson and Bernoulli models and evaluated for large spatial data sets. Experimental results show that ESCIP can detect irregularly shaped spatial clusters from millions of points with high efficiency. It is also demonstrated that the method outperforms the spatial scan statistics on the flexibility of cluster shapes and computational performance. Furthermore, ESCIP ensures that every subset of a detected cluster is statistically significant and contiguous. Key Words: cyberGIS, spatial algorithm, spatial analysis, spatial clustering.
机译:在异构点过程中检测不规则形状的空间簇是具有挑战性的,因为具有不同尺寸和形状的潜在簇的数量可以是巨大的。该研究开发了一种新的方法,基于扩展的空间聚类,用于非均匀点处理(ESCIP),用于在分析空间大数据的背景下检测异构点过程内的任何形状内的空间簇。统计测试用于找到具有比期望的邻近区域的核心点点,而且通过连接附近的核心点来开发出的扩展方法来找到不规则形状的簇。除了在空间扫描统计中所做的那样,在空间扫描统计中完成所有潜在集群,而不是使用蛮力搜索,而是需要测试每个潜在核心点的小相邻区域。此外,利用空间索引以加快搜索附近点和集群的扩展。所提出的方法是用泊松和伯努利模型实现,并评估大型空间数据集。实验结果表明,梯田可以高效率地检测来自数百万点的不规则形状的空间簇。还表明该方法优于集群形状和计算性能的灵活性的空间扫描统计。此外,ESFIP确保了检测到的集群的每个子集是统计上显着和连续的。关键词:Cyber​​GIS,空间算法,空间分析,空间聚类。

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