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Modelling transport mode decisions using hierarchical logistic regression models with spatial and cluster effectsa

机译:使用具有空间效应和聚类效应的分层逻辑回归模型对运输模式决策建模

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This work is motivated by a mobility study conducted in the city of Munich, Germany. The variable of interest is a binary response, which indicates whether public transport has been utilized or not. One of the central questions is to identify areas of low/high utilization of public transport after adjusting for explanatory factors such as trip, individual and household attributes. For the spatial effects a modification of a class of Markov random fields (MRF) models with proper joint distributions introduced by Pettitt et al. (2002) is developed. It contains the intrinsic MRF in the limit and allows for efficient Markov Chain Monte Carlo (MCMC) algorithms. Further cluster effects using group and individual approaches are taken into consideration. The first one models heterogeneity between clusters, while the second one models heterogeneity within clusters. A naive approach to include individual cluster effects results in an unidentifiable model. It is shown how a re-parametrization gives identifiable parameters. This provides a new approach for modeling heterogeneity within clusters. Finally, the proposed model classes are applied to the mobility study.
机译:这项工作的动机是在德国慕尼黑市进行的一项流动性研究。感兴趣的变量是一个二进制响应,它指示是否已使用公共交通工具。中心问题之一是在对诸如旅行,个人和家庭属性之类的解释性因素进行调整之后,确定公共交通利用率低/高的区域。对于空间效应,由Pettitt等人引入了一类具有适当联合分布的马尔可夫随机场(MRF)模型。 (2002年)。它在极限中包含固有MRF,并允许有效的马尔可夫链蒙特卡洛(MCMC)算法。使用组和单个方法的进一步群集效应已得到考虑。第一个模型模拟集群之间的异质性,而第二个模型模拟集群内部的异质性。包含单个群集效应的幼稚方法导致模型无法识别。它显示了重新参数化如何给出可识别的参数。这提供了一种用于建模集群内异构性的新方法。最后,将提出的模型类别应用于流动性研究。

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