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Spatial Random Slope Multilevel Modeling Using Multivariate Conditional Autoregressive Models: A Case Study of Subjective Travel Satisfaction in Beijing

机译:基于多元条件自回归模型的空间随机坡度多层次建模-以北京市主观旅游满意度为例

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This article explores how to incorporate a spatial dependence effect into the standard multilevel modeling (MLM). The proposed method is particularly well suited to the analysis of geographically clustered survey data where individuals are nested in geographical areas. Drawing on multivariate conditional autoregressive models, we develop a spatial random slope MLM approach to account for the within-group dependence among individuals in the same area and the spatial dependence between areas simultaneously. Our approach improves on recent methodological advances in the integrated spatial and MLM literature, offering greater flexibility in terms of model specification by allowing regression coefficients to be spatially varied. Bayesian Markov chain Monte Carlo (MCMC) algorithms are derived to implement the proposed model. Using two-level travel satisfaction data in Beijing, we apply the proposed approach as well as the standard nonspatial random slope MLM to investigate subjective travel satisfaction of residents and its determinants. Model comparison results show strong evidence that the proposed method produces a significant improvement against a nonspatial random slope MLM. A fairly large spatial correlation parameter suggests strong spatial dependence in district-level random effects. Moreover, spatial patterns of district-level random effects of locational variables have been identified, with high and low values clustering together.
机译:本文探讨了如何将空间依赖效应纳入标准多级建模(MLM)。所提出的方法特别适合于将个人嵌套在地理区域中的地理集群调查数据进行分析。利用多元条件自回归模型,我们开发了一种空间随机斜率MLM方法,以解决同一区域内个体之间的组内依赖性以及区域间同时的空间依赖性。我们的方法改进了集成空间和MLM文献中最新的方法论进展,通过允许回归系数在空间上变化,从而在模型规范方面提供了更大的灵活性。导出贝叶斯马尔可夫链蒙特卡罗(MCMC)算法以实现该模型。使用北京的两级旅行满意度数据,我们采用建议的方法以及标准的非空间随机斜率MLM来研究居民的主观旅行满意度及其决定因素。模型比较结果表明,有力的证据表明,所提出的方法对非空间随机斜率MLM产生了显着改善。相当大的空间相关性参数表明在区域级别的随机效应中强烈的空间依赖性。此外,已经确定了位置变量的区级随机效应的空间格局,其中高值和低值聚在一起。

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