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Local Indicators of Network-Constrained Clusters in Spatial Point Patterns

机译:空间点模式下网络受限簇的局部指标

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摘要

The detection of clustering in a spatial phenomenon of interest is an important issue in spatial pattern analysis. While traditional methods mostly rely on the planar space assumption, many spatial phenomena defy the logic of this assumption. For instance, certain spatial phenomena related to human activities are inherently constrained by a transportation network because of our strong dependence on the transportation system. This article thus introduces an exploratory spatial data analysis method named local indicators of network-constrained clusters (LINCS), for detecting local-scale clustering in a spatial phenomenon that is constrained by a network space. The LINCS method presented here applies to a set of point events distributed over the network space. It is based on the network K-function, which is designed to determine whether an event distribution has a significant clustering tendency with respect to the network space. First, an incremental K-function is developed so as to identify cluster size more explicitly than the original K-function does. Second, to enable identification of cluster locations, a local K-function is derived by decomposing and modifying the original network K-function. The local K-function LINCS, which is referred to as KLINCS, is tested on the distribution of 1997 highway vehicle crashes in the Buffalo, NY area. Also discussed is an adjustment of the KLINCS method for the nonuniformity of the population at risk over the network. As traffic volume can be seen as a surrogate of the population exposed to a risk of vehicle crashes, the spatial distribution of vehicle crashes is examined in relation to that of traffic volumes on the network. The results of the KLINCS analysis are validated through a comparison with priority investigation locations (PILs) designated by the New York State Department of Transportation.
机译:在感兴趣的空间现象中聚类的检测是空间模式分析中的重要问题。尽管传统方法主要依赖于平面空间假设,但许多空间现象违背了该假设的逻辑。例如,与人类活动有关的某些空间现象由于我们对运输系统的强烈依赖而固有地受到运输网络的限制。因此,本文介绍了一种探索性的空间数据分析方法,称为网络受限集群的局部指标(LINCS),用于检测受网络空间约束的空间现象中的局部尺度聚类。这里介绍的LINCS方法适用于分布在网络空间上的一组点事件。它基于网络K函数,该函数旨在确定事件分布相对于网络空间是否具有明显的聚类趋势。首先,开发了增量K函数,以便比原始K函数更明确地识别群集大小。其次,为了能够识别群集位置,通过分解和修改原始网络K函数来导出局部K函数。本地K函数LINCS(称为KLINCS)已在纽约州布法罗地区1997年高速公路车辆事故的分布上进行了测试。还讨论了针对网络上处于风险中的人群的不均匀性的KLINCS方法的调整。由于交通量可以看作是遭受车祸风险的人口的替代品,因此,应根据网络上的交通量来检查车祸的空间分布。通过与纽约州运输部指定的优先调查地点(PIL)进行比较,可以验证KLINCS分析的结果。

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