We focus on a Bayesian approach to learn sparse models by simultaneously utilizing multiple groups of measurements that are marked by a similar sparseness profile. Joint learning of sparse representations for multiple models has been mostly overlooked, although it is a useful tool for exploiting data redundancy by modeling informative relationships within groups of measurements. To this end, two hierarchical Bayesian models are introduced and associated algorithms are proposed for multitask sparse Bayesian learning (SBL). It is shown that the data correlations for different tasks are taken into account more effectively by using the hierarchical model with a common prediction‐error precision parameter across all related tasks, which leads to...
© 2015 Elsevier B.V. Abstract Sparse Bayesian learning (SBL) has high computational complexity assoc...
<p>The concept of sparseness is harnessed to learn a low dimensional representation of high dimensio...
A major challenge in pervasive computing is to learn activity patterns, such as bathing and cleaning...
We focus on a Bayesian approach to learn sparse models by simultaneously utilizing multiple groups o...
Structural damage due to excessive loading or environmental degradation typically occurs in localize...
Most hidden damage that occurs in civil structures is in localized areas. In this paper, this inform...
Sparse Bayesian learning (SBL) has attracted substantial interest in recent years for reliable estim...
Many machine learning and signal processing tasks involve computing sparse representations using an ...
Sparse signal recovery algorithms have significant impact on many fields. The core of these algorith...
Sparse signal recovery algorithms have significant impact on many fields. The core of these algorith...
Abstract—In this paper, we propose the exploitation of sparse Bayesian learning in multiple-input mu...
We consider the problem of recovering block-sparse signals whose structures are unknown \emph{a prio...
Abstract—In this paper, we develop a new sparse Bayesian learning method for recovery of block-spars...
Sparse regression methods are used for the reconstruction of compressed signals, that are usually sp...
In the context of statistical machine learning, sparse learning is a procedure that seeks a reconcil...
© 2015 Elsevier B.V. Abstract Sparse Bayesian learning (SBL) has high computational complexity assoc...
<p>The concept of sparseness is harnessed to learn a low dimensional representation of high dimensio...
A major challenge in pervasive computing is to learn activity patterns, such as bathing and cleaning...
We focus on a Bayesian approach to learn sparse models by simultaneously utilizing multiple groups o...
Structural damage due to excessive loading or environmental degradation typically occurs in localize...
Most hidden damage that occurs in civil structures is in localized areas. In this paper, this inform...
Sparse Bayesian learning (SBL) has attracted substantial interest in recent years for reliable estim...
Many machine learning and signal processing tasks involve computing sparse representations using an ...
Sparse signal recovery algorithms have significant impact on many fields. The core of these algorith...
Sparse signal recovery algorithms have significant impact on many fields. The core of these algorith...
Abstract—In this paper, we propose the exploitation of sparse Bayesian learning in multiple-input mu...
We consider the problem of recovering block-sparse signals whose structures are unknown \emph{a prio...
Abstract—In this paper, we develop a new sparse Bayesian learning method for recovery of block-spars...
Sparse regression methods are used for the reconstruction of compressed signals, that are usually sp...
In the context of statistical machine learning, sparse learning is a procedure that seeks a reconcil...
© 2015 Elsevier B.V. Abstract Sparse Bayesian learning (SBL) has high computational complexity assoc...
<p>The concept of sparseness is harnessed to learn a low dimensional representation of high dimensio...
A major challenge in pervasive computing is to learn activity patterns, such as bathing and cleaning...