Seemingly unrelated regression (SUR) models are useful in studying the interactions among economic variables. In a high dimensional setting, these models require a large number of parameters to be estimated and suffer of inferential problems. To avoid overparametrization issues, we propose a hierarchical Dirichlet process prior (DPP) for SUR models, which allows shrinkage of coefficients toward multiple locations. We propose a two-stage hierarchical prior distribution, where the first stage of the hierarchy consists in a lasso conditionally independent prior of the Normal-Gamma family for the coefficients. The second stage is given by a random mixture distribution, which allows for parameter parsimony through two components: the first is a ...
This book presents a systematic and comprehensive treatment of various prior processes that have bee...
This body of work develops new Bayesian nonparametric (BNP) models for estimating causal effects wit...
This body of work develops new Bayesian nonparametric (BNP) models for estimating causal effects wit...
Seemingly unrelated regression (SUR) models are useful in studying the interactions among economic v...
Seemingly unrelated regression (SUR) models are used in studying the interactions among economic var...
High dimensional vector autoregressive (VAR) models require a large number of parameters to be estim...
We present the hierarchical Dirichlet scal-ing process (HDSP), a Bayesian nonparametric mixed member...
The availability of complex-structured data has sparked new research directions in statistics and ma...
This paper proposes a simulation-free estimation algorithm for vector autoregressions (VARs) that al...
<p>Vector autoregressive (VAR) models aim to capture linear temporal interdependencies among multipl...
In this paper we discuss implementing Bayesian fully nonparametric regression by defining a process ...
We propose the hierarchical Dirichlet process (HDP), a nonparametric Bayesian model for clustering ...
In recent years the Dirichlet process prior has experienced a great success in the context of Bayesi...
In the Bayesian nonparametric family, Dirichlet Process (DP) is a prior distribution that is able to...
A family of nonparametric prior distributions which extends the Dirichlet process is introduced and ...
This book presents a systematic and comprehensive treatment of various prior processes that have bee...
This body of work develops new Bayesian nonparametric (BNP) models for estimating causal effects wit...
This body of work develops new Bayesian nonparametric (BNP) models for estimating causal effects wit...
Seemingly unrelated regression (SUR) models are useful in studying the interactions among economic v...
Seemingly unrelated regression (SUR) models are used in studying the interactions among economic var...
High dimensional vector autoregressive (VAR) models require a large number of parameters to be estim...
We present the hierarchical Dirichlet scal-ing process (HDSP), a Bayesian nonparametric mixed member...
The availability of complex-structured data has sparked new research directions in statistics and ma...
This paper proposes a simulation-free estimation algorithm for vector autoregressions (VARs) that al...
<p>Vector autoregressive (VAR) models aim to capture linear temporal interdependencies among multipl...
In this paper we discuss implementing Bayesian fully nonparametric regression by defining a process ...
We propose the hierarchical Dirichlet process (HDP), a nonparametric Bayesian model for clustering ...
In recent years the Dirichlet process prior has experienced a great success in the context of Bayesi...
In the Bayesian nonparametric family, Dirichlet Process (DP) is a prior distribution that is able to...
A family of nonparametric prior distributions which extends the Dirichlet process is introduced and ...
This book presents a systematic and comprehensive treatment of various prior processes that have bee...
This body of work develops new Bayesian nonparametric (BNP) models for estimating causal effects wit...
This body of work develops new Bayesian nonparametric (BNP) models for estimating causal effects wit...