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引用次数: 0
摘要
核密度估计(KDE)是地理学中广泛使用的一种研究点模式数据集中度的方法。地理网络是具有特定特征的 1.5 维空间,用于分析网络上发生的事件(道路事故、管道泄漏、河流沿岸物种等)。在过去十年中,它们需要对空间 KDE 进行扩展。网络 KDE(NKDE)已被提出了多个版本,每个版本都有各自的优缺点,目前已被经常使用。然而,NKDE 的时间扩展(TNKDE)却很少受到关注。在实践中,当所研究的事件发生在特定的时间点并受限于网络时,地理学家所使用的方法往往会忽略网络或时间维度。在此,我们基于 NKDE 和核乘积的最新发展提出了 TNKDE。我们还采用了 KDE 的经典方法(Diggle 修正法、Abramson 自适应带宽法和最大似然法带宽选择法)。我们还用 2016 年至 2019 年期间涉及一名行人的蒙特利尔道路碰撞事故对该方法进行了说明。
Kernel density estimation (KDE) is a widely used method in geography to study concentration of point pattern data. Geographical networks are 1.5 dimensional spaces with specific characteristics, analyzing events occurring on networks (accidents on roads, leakages of pipes, species along rivers, etc.). In the last decade, they required the extension of spatial KDE. Several versions of Network KDE (NKDE) have been proposed, each with their particular advantages and disadvantages, and are now used on a regular basis. However, scant attention has been given to the temporal extension of NKDE (TNKDE). In practice, when the studied events happen at specific time points and are constrained on a network, the methodologies used by geographers tend to overlook either the network or the temporal dimension. Here we propose a TNKDE based on the recent development of NKDE and the product of kernels. We also adapt classical methods of KDE (Diggle's correction, Abramson's adaptive bandwidth and bandwidth selection by leave-one-out maximum likelihood). We also illustrate the method with Montreal road crashes involving a pedestrian between 2016 and 2019.
期刊介绍:
First in its specialty area and one of the most frequently cited publications in geography, Geographical Analysis has, since 1969, presented significant advances in geographical theory, model building, and quantitative methods to geographers and scholars in a wide spectrum of related fields. Traditionally, mathematical and nonmathematical articulations of geographical theory, and statements and discussions of the analytic paradigm are published in the journal. Spatial data analyses and spatial econometrics and statistics are strongly represented.