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Spatial Interestingness Measures for Co-location Pattern Mining

机译:代位模式挖掘的空间兴趣度度量

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Co-location pattern mining aims at finding subsets of spatial features frequently located together in spatial proximity. The underlying motivation is to model the spatial correlation structure between the features. This allows to discover interesting co-location rules (feature interactions) for spatial analysis and prediction tasks. As in association rule mining, a major problem is the huge amount of possible patterns and rules. Hence, measures are needed to identify interesting patterns and rules. Existing approaches so far focused on finding frequent patterns, patterns including rare features, and patterns occurring in small (local) regions. In this paper, we present a new general class of interestingness measures that are based on the spatial distribution of co-location patterns. These measures allow to judge the interestingness of a pattern based on properties of the underlying spatial feature distribution. The results are different from standard measures like participation index or confidence. To demonstrate the usefulness of these measures, we apply our approach to the discovery of rules on a subset of the OpenStreetMap point-of-interest data.
机译:并置模式挖掘旨在寻找经常在空间邻近位置一起定位的空间特征子集。潜在动机是为特征之间的空间相关性结构建模。这允许发现用于空间分析和预测任务的有趣的共置规则(功能交互)。与关联规则挖掘一样,一个主要问题是大量可能的模式和规则。因此,需要采取措施来识别有趣的模式和规则。迄今为止,现有的方法集中于发现频繁的模式,包括罕见特征的模式以及在小(局部)区域中发生的模式。在本文中,我们提出了一种新的通用类别的兴趣度度量,该度量基于共址模式的空间分布。这些措施允许根据潜在的空间特征分布的属性来判断模式的趣味性。结果不同于参与指标或置信度之类的标准度量。为了证明这些措施的有用性,我们将我们的方法应用于在OpenStreetMap兴趣点数据的子集上发现规则。

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