A semi-parametric spatial model for spatial dependence is proposed in Poisson regressions to study the effects of risk factors on incidence outcomes. The spatial model is constructed through an application of reproducing kernels. A Bayesian framework is proposed to infer the unknown parameters. Simulations are performed to compare the reproducing kernel-based method with several commonly used approaches in spatial modeling, including independent Gaussian and CAR models. Compared with these models, the reproducing kernel-based method is easy to implement and more flexible in terms of the ability to model various spatial dependence patterns. To further demonstrate the proposed method, two real data applications are discussed: Scottish lip can...
In this paper we develop a nonparametric multivariate spatial model that avoids specifying a Gaussia...
Includes bibliographical references (p. ).Under and over reporting is a common problem in social sci...
In this paper we consider regression models for count data allowing for overdispersion in a Bayesian...
A semi-parametric spatial model for spatial dependence is proposed in Poisson regressions to study t...
This paper describes geographically weighted Poisson regression (GWPR) and its semi-parametric varia...
Modeling spatially correlated data has gained increased attention in recent years, particularly due ...
In this paper we present a Gibbs sampler for a Poisson model including spatial effects. Frühwirth-Sc...
In this paper we present a new procedure for nonparametric regression in case of spatially dependent...
AbstractGastric cancer is the most prevalent and the leading cause of cancer death in Colombia. It h...
We consider the problem of estimating the spatial variation in relative risks of two diseases, say, ...
[[abstract]]In the statistical analysis of spatial point patterns, it is often important to investig...
Apparent spatial dependence might arise in either of two dierent ways: from spatial correlation, or ...
In this paper we present and evaluate a Gibbs sampler for a Poisson regression model including spati...
<p>Results from Bayesian Poisson spatial regression models of intimate partner violence and child ma...
The auto-Poisson model describes georeferenced data consisting of counts exhibiting spatial dependen...
In this paper we develop a nonparametric multivariate spatial model that avoids specifying a Gaussia...
Includes bibliographical references (p. ).Under and over reporting is a common problem in social sci...
In this paper we consider regression models for count data allowing for overdispersion in a Bayesian...
A semi-parametric spatial model for spatial dependence is proposed in Poisson regressions to study t...
This paper describes geographically weighted Poisson regression (GWPR) and its semi-parametric varia...
Modeling spatially correlated data has gained increased attention in recent years, particularly due ...
In this paper we present a Gibbs sampler for a Poisson model including spatial effects. Frühwirth-Sc...
In this paper we present a new procedure for nonparametric regression in case of spatially dependent...
AbstractGastric cancer is the most prevalent and the leading cause of cancer death in Colombia. It h...
We consider the problem of estimating the spatial variation in relative risks of two diseases, say, ...
[[abstract]]In the statistical analysis of spatial point patterns, it is often important to investig...
Apparent spatial dependence might arise in either of two dierent ways: from spatial correlation, or ...
In this paper we present and evaluate a Gibbs sampler for a Poisson regression model including spati...
<p>Results from Bayesian Poisson spatial regression models of intimate partner violence and child ma...
The auto-Poisson model describes georeferenced data consisting of counts exhibiting spatial dependen...
In this paper we develop a nonparametric multivariate spatial model that avoids specifying a Gaussia...
Includes bibliographical references (p. ).Under and over reporting is a common problem in social sci...
In this paper we consider regression models for count data allowing for overdispersion in a Bayesian...