In this paper we propose an approach to both estimate and select unknown smooth functions in an additive model with potentially many functions. Each function is written as a linear combination of basis terms, with coefficients regularized by a proper linearly constrained Gaussian prior. Given any potentially rank deficient prior precision matrix, we show how to derive linear constraints so that the corresponding effect is identified in the additive model. This allows for the use of a wide range of bases and precision matrices in priors for regularization. By introducing indicator variables, each constrained Gaussian prior is augmented with a point mass at zero, thus allowing for function selection. Posterior inference is calculated using Ma...
Variable selection techniques have become increasingly popular amongst statisticians due to an incre...
This dissertation aims at introducing Gaussian process priors on the regression to capture features ...
This dissertation aims at introducing Gaussian process priors on the regression to capture features ...
In this paper we propose an approach to both estimate and select unknown smooth functions in an addi...
Data structures in modern applications frequently combine the necessity of flexible regression techn...
Data structures in modern applications frequently combine the necessity of flexible regression techn...
<p>Collections of large volumes of rich and complex data has become ubiquitous in recent years, posi...
Data structures in modern applications frequently combine the necessity of flexible regression techn...
Data structures in modern applications frequently combine the necessity of flexible regression techn...
In regression models with many potential predictors, choosing an appropriate subset of covariates an...
In regression models with many potential predictors, choosing an appropriate subset of covariates an...
In regression models with many potential predictors, choosing an appropriate subset of covariates an...
Data structures in modern applications frequently combine the necessity of flexible regression techn...
In regression models with many potential predictors, choosing an appropriate subset of covariates an...
Challenging research in various fields has driven a wide range of methodological advances in variabl...
Variable selection techniques have become increasingly popular amongst statisticians due to an incre...
This dissertation aims at introducing Gaussian process priors on the regression to capture features ...
This dissertation aims at introducing Gaussian process priors on the regression to capture features ...
In this paper we propose an approach to both estimate and select unknown smooth functions in an addi...
Data structures in modern applications frequently combine the necessity of flexible regression techn...
Data structures in modern applications frequently combine the necessity of flexible regression techn...
<p>Collections of large volumes of rich and complex data has become ubiquitous in recent years, posi...
Data structures in modern applications frequently combine the necessity of flexible regression techn...
Data structures in modern applications frequently combine the necessity of flexible regression techn...
In regression models with many potential predictors, choosing an appropriate subset of covariates an...
In regression models with many potential predictors, choosing an appropriate subset of covariates an...
In regression models with many potential predictors, choosing an appropriate subset of covariates an...
Data structures in modern applications frequently combine the necessity of flexible regression techn...
In regression models with many potential predictors, choosing an appropriate subset of covariates an...
Challenging research in various fields has driven a wide range of methodological advances in variabl...
Variable selection techniques have become increasingly popular amongst statisticians due to an incre...
This dissertation aims at introducing Gaussian process priors on the regression to capture features ...
This dissertation aims at introducing Gaussian process priors on the regression to capture features ...