一种基于约束邻域的协同定位模式挖掘方法

T. V. Canh, Michael Gertz
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引用次数: 9

摘要

由于观测和启用gps的设备收集的空间数据量不断增加,从这些数据中挖掘有趣或以前未知的模式已成为一项重大挑战。在许多可能的模式中,描述具有某些特征的对象频繁发生的空间接近性的共定位模式特别令人感兴趣。虽然已经提出了几种方法来发现这种模式,但所谓的自共定位模式(其中具有相同特征的对象在空间上接近)尚未得到有效解决。此外,大多数共定位发现方法的计算量很大,例如空间连接。为了解决这些问题,本文提出了一种基于约束邻域的新方法来寻找同位模式。这种方法可以发现星形和团形共定位模式,包括单个和复杂的自共定位。基于约束邻域思想,我们的方法既不需要执行空间连接或实例连接,也不需要检查团来查找共定位实例。为了证明我们提出的框架的有效性,我们使用真实世界和合成数据集进行了实验。正如我们的评估所示,基于约束邻域的方法在所发现的共定位模式类型和运行时复杂性方面优于众所周知的无接缝方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Constraint Neighborhood Based Approach for Co-location Pattern Mining
Driven by the ever increasing amount of spatial data collected by observations and GPS-enabled devices, mining such data for interesting or previously unknown patterns has become a major challenge. Among the many possible patterns, co-location patterns describing the frequently occurring spatial proximity of objects possessing some features are of particular interest. While several approaches have been proposed to discover such patterns, so called self co-location patterns where objects having the same feature (among others) are in spatial proximity, however, have not been effectively addressed. Furthermore, most of the co-location discovery methods suffer from expensive computations, such as spatial joins. To address these problems, in this paper, we propose a novel constraint neighborhood based approach to find co-location patterns. This approach can discover both star and clique co-location patterns, including single and complex self co-locations. Based on the constraint neighborhood idea, our method neither needs to perform spatial or instance joins nor checks for cliques to find co-location instances. To demonstrate the effectiveness of our proposed framework, we conducted experiments using both real-world and synthetic data sets. As our evaluations show, the constraint neighborhood based approach outperforms the well-known joinless approach with respect to the types of co-location patterns discovered and runtime complexity.
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