As spatial correlation and heterogeneity often coincide in the data, we propose a spatial single-index varying-coefficient model. For the model, in this paper, a robust variable selection method based on spline estimation and exponential squared loss is offered to estimate parameters and identify significant variables. We establish the theoretical properties under some regularity conditions. A block coordinate descent (BCD) algorithm with the concave–convex process (CCCP) is composed uniquely for solving algorithms. Simulations show that our methods perform well even though observations are noisy or the estimated spatial mass matrix is inaccurate
Spatially varying coefficient models are a classical tool to explore the spatial nonstationarity of ...
This paper compares the performance of Bayesian variable selection approaches for spatial autoregres...
Spatial econometric models allow for interactions among variables through the specification of a spa...
As spatial correlation and heterogeneity often coincide in the data, we propose a spatial single-ind...
With the continuous application of spatial dependent data in various fields, spatial econometric mod...
Doctor of PhilosophyDepartment of StatisticsMajor Professor Not ListedIn many economic and geographi...
In this paper, we are concerned with two common and related problems for generalized varying-coeffic...
Spatial data analysis has become more and more important in the studies of ecology and economics dur...
As applied sciences grow by leaps and bounds, semiparametric regression analyses have broad applicat...
[[abstract]]Variable selection in geostatistical regression is an important problem, but has not bee...
International audienceIn this article, we consider nonparametric smoothing and variable selection in...
In recent years, spatial data widely exist in various fields such as finance, geology, environment, ...
Single index varying coefficient model is a very attractive statistical model due to its ability to ...
In this paper, we consider the problem of variable selection for high-dimensional generalized varyin...
This paper investigates the adequacy of the matrix exponential spatial specifications (MESS) as an a...
Spatially varying coefficient models are a classical tool to explore the spatial nonstationarity of ...
This paper compares the performance of Bayesian variable selection approaches for spatial autoregres...
Spatial econometric models allow for interactions among variables through the specification of a spa...
As spatial correlation and heterogeneity often coincide in the data, we propose a spatial single-ind...
With the continuous application of spatial dependent data in various fields, spatial econometric mod...
Doctor of PhilosophyDepartment of StatisticsMajor Professor Not ListedIn many economic and geographi...
In this paper, we are concerned with two common and related problems for generalized varying-coeffic...
Spatial data analysis has become more and more important in the studies of ecology and economics dur...
As applied sciences grow by leaps and bounds, semiparametric regression analyses have broad applicat...
[[abstract]]Variable selection in geostatistical regression is an important problem, but has not bee...
International audienceIn this article, we consider nonparametric smoothing and variable selection in...
In recent years, spatial data widely exist in various fields such as finance, geology, environment, ...
Single index varying coefficient model is a very attractive statistical model due to its ability to ...
In this paper, we consider the problem of variable selection for high-dimensional generalized varyin...
This paper investigates the adequacy of the matrix exponential spatial specifications (MESS) as an a...
Spatially varying coefficient models are a classical tool to explore the spatial nonstationarity of ...
This paper compares the performance of Bayesian variable selection approaches for spatial autoregres...
Spatial econometric models allow for interactions among variables through the specification of a spa...