In all areas of human knowledge, datasets are increasing in both size and complexity, creating the need for richer statistical models. This trend is also true for economic data, where high-dimensional and nonlinear/noparametric inference is the norm in several fields of applied econometric work. The purpose of this paper is to introduce the reader to the realm of Bayesian model determination, by surveying modern shrinkage and variable selection algorithms and methodologies. Bayesian inference is a natural probabilistic framework for quantifying uncertainty and learning about model parameters, and this feature is particularly important for inference in modern models of high dimensions and increased complexity. We begin with a linear regress...
Time-varying parameter (TVP) models have the potential to be over-parameterized, particularly when t...
High dimensional data is prevalent in modern and contemporary science, and many statistics and machi...
We examine the issue of variable selection in linear regression modeling, where we have a potentiall...
Sparsity is a standard structural assumption that is made while modeling high-dimensional statistica...
This paper builds on a simple unified representation of shrinkage Bayes estimators based on hierarch...
In high-dimensional regression models, variable selection becomes challenging from a computational a...
This paper builds on a simple unified representation of shrinkage Bayes estimators based on hierarch...
In macroeconomics, predicting future realisations of economic variables is the central issue for pol...
This thesis presents a set of methods unified around the theme of providing valid inference when dat...
Thesis (Ph.D.)--University of Washington, 2023Choosing a statistical model and accounting for uncert...
In linear regression problems with many predictors, penalized regression techniques are often used t...
Bayesian econometric methods are increasingly popular in empirical macroeconomics. They have been pa...
Vector autoregressive (VAR) models are frequently used for forecasting and impulse response analysis...
This dissertation focuses on developing high dimensional regression techniques to analyze large scal...
This paper reviews global-local prior distributions for Bayesian inference in high-dimensional regre...
Time-varying parameter (TVP) models have the potential to be over-parameterized, particularly when t...
High dimensional data is prevalent in modern and contemporary science, and many statistics and machi...
We examine the issue of variable selection in linear regression modeling, where we have a potentiall...
Sparsity is a standard structural assumption that is made while modeling high-dimensional statistica...
This paper builds on a simple unified representation of shrinkage Bayes estimators based on hierarch...
In high-dimensional regression models, variable selection becomes challenging from a computational a...
This paper builds on a simple unified representation of shrinkage Bayes estimators based on hierarch...
In macroeconomics, predicting future realisations of economic variables is the central issue for pol...
This thesis presents a set of methods unified around the theme of providing valid inference when dat...
Thesis (Ph.D.)--University of Washington, 2023Choosing a statistical model and accounting for uncert...
In linear regression problems with many predictors, penalized regression techniques are often used t...
Bayesian econometric methods are increasingly popular in empirical macroeconomics. They have been pa...
Vector autoregressive (VAR) models are frequently used for forecasting and impulse response analysis...
This dissertation focuses on developing high dimensional regression techniques to analyze large scal...
This paper reviews global-local prior distributions for Bayesian inference in high-dimensional regre...
Time-varying parameter (TVP) models have the potential to be over-parameterized, particularly when t...
High dimensional data is prevalent in modern and contemporary science, and many statistics and machi...
We examine the issue of variable selection in linear regression modeling, where we have a potentiall...