Sparsity-promoting prior along with Bayesian inference is an effective approach in solving sparse linear models (SLMs). In this paper, we first introduce a new sparsity-promoting prior coined as Double Lomax prior, which corresponds to a three-level hierarchical model, and then we derive a full variational Bayesian (VB) inference procedure. When noninformative hyperprior is assumed, we further show that the proposed method has one more latent variable than the canonical automatic relevance determination (ARD). This variable has a smoothing effect on the solution trajectories, thus providing improved convergence performance. The effectiveness of the proposed method is demonstrated by numerical simulations including autoregressive (AR) model ...
Abstract. We present a framework for efficient, accurate approximate Bayesian inference in generaliz...
International audienceIn this review article, we propose to use the Bayesian inference approach for ...
Recent theoretical and experimental work in imaging neuroscience reveals that activations inferred f...
Recently, relevance vector machines (RVM) have been fashioned from a sparse Bayesian learning (SBL) ...
Abstract—Many practical methods for finding maximally sparse coefficient expansions involve solving ...
Learning sparsity pattern in high dimension is a great challenge in both implementation and theory. ...
Variable selection techniques have become increasingly popular amongst statisticians due to an incre...
In sparse Bayesian learning (SBL), Gaussian scale mixtures (GSMs) have been used to model sparsity-i...
Variable selection techniques have become increasingly popular amongst statisticians due to an incre...
Abstract—In this work, a new fast variational sparse Bayesian learning (SBL) approach with automatic...
This paper presents a new sparse signal recovery algorithm using variational Bayesian inference base...
Sparsity is a fundamental concept of modern statistics, and often the only general principle availab...
In many problem settings, parameter vectors are not merely sparse, but depen-dent in such a way that...
A Bayesian approximation to finding the minimum `0 norm solution for an underdetermined linear syste...
The linear model with sparsity-favouring prior on the coefficients has important applications in man...
Abstract. We present a framework for efficient, accurate approximate Bayesian inference in generaliz...
International audienceIn this review article, we propose to use the Bayesian inference approach for ...
Recent theoretical and experimental work in imaging neuroscience reveals that activations inferred f...
Recently, relevance vector machines (RVM) have been fashioned from a sparse Bayesian learning (SBL) ...
Abstract—Many practical methods for finding maximally sparse coefficient expansions involve solving ...
Learning sparsity pattern in high dimension is a great challenge in both implementation and theory. ...
Variable selection techniques have become increasingly popular amongst statisticians due to an incre...
In sparse Bayesian learning (SBL), Gaussian scale mixtures (GSMs) have been used to model sparsity-i...
Variable selection techniques have become increasingly popular amongst statisticians due to an incre...
Abstract—In this work, a new fast variational sparse Bayesian learning (SBL) approach with automatic...
This paper presents a new sparse signal recovery algorithm using variational Bayesian inference base...
Sparsity is a fundamental concept of modern statistics, and often the only general principle availab...
In many problem settings, parameter vectors are not merely sparse, but depen-dent in such a way that...
A Bayesian approximation to finding the minimum `0 norm solution for an underdetermined linear syste...
The linear model with sparsity-favouring prior on the coefficients has important applications in man...
Abstract. We present a framework for efficient, accurate approximate Bayesian inference in generaliz...
International audienceIn this review article, we propose to use the Bayesian inference approach for ...
Recent theoretical and experimental work in imaging neuroscience reveals that activations inferred f...