A Semiparametric Bayesian Approach to Heterogeneous Spatial Autoregressive Models
Ting Liu,
Dengke Xu,
Shiqi Ke
Abstract:Many semiparametric spatial autoregressive (SSAR) models have been used to analyze spatial data in a variety of applications; however, it is a common phenomenon that heteroscedasticity often occurs in spatial data analysis. Therefore, when considering SSAR models in this paper, it is allowed that the variance parameters of the models can depend on the explanatory variable, and these are called heterogeneous semiparametric spatial autoregressive models. In order to estimate the model parameters, a Bayesian esti… Show more
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