The use of L1 regularisation for sparse learning has generated immense research interest, with successful application in such diverse areas as signal acquisition, image coding, genomics and collaborative filtering. While existing work highlights the many advantages of L1 methods, in this paper we find that L1 regularisation often dramatically underperforms in terms of predictive performance when compared with other methods for inferring sparsity. We focus on unsupervised latent variable models, and develop L1 minimising factor models, Bayesian variants of "L1", and Bayesian models with a stronger L0-like sparsity induced through spike-and-slab distributions. These spike-and-slab Bayesian factor models encourage sparsity while accounting for...
In many problem settings, parameter vectors are not merely sparse, but depen-dent in such a way that...
Sparsity-promoting prior along with Bayesian inference is an effective approach in solving sparse li...
Recent theoretical and experimental work in imaging neuroscience reveals that activations inferred f...
The use of L1 regularisation for sparse learn-ing has generated immense research inter-est, with man...
The elements in the real world are often sparsely connected. For example, in a social network, each ...
In the context of statistical machine learning, sparse learning is a procedure that seeks a reconcil...
Sparse regression methods are used for the reconstruction of compressed signals, that are usually sp...
Learning sparsity pattern in high dimension is a great challenge in both implementation and theory. ...
Finding the sparsest or minimum L0-norm representation of a signal given a (possibly) overcomplete d...
Sparsity plays an essential role in a number of modern algorithms. This thesis examines how we can i...
Pragmatism is the leading motivation of regularization. We can understand regularization as a modifi...
<p>The concept of sparseness is harnessed to learn a low dimensional representation of high dimensio...
Sparsity is a fundamental concept of modern statistics, and often the only general principle availab...
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 ...
In many problem settings, parameter vectors are not merely sparse, but depen-dent in such a way that...
Sparsity-promoting prior along with Bayesian inference is an effective approach in solving sparse li...
Recent theoretical and experimental work in imaging neuroscience reveals that activations inferred f...
The use of L1 regularisation for sparse learn-ing has generated immense research inter-est, with man...
The elements in the real world are often sparsely connected. For example, in a social network, each ...
In the context of statistical machine learning, sparse learning is a procedure that seeks a reconcil...
Sparse regression methods are used for the reconstruction of compressed signals, that are usually sp...
Learning sparsity pattern in high dimension is a great challenge in both implementation and theory. ...
Finding the sparsest or minimum L0-norm representation of a signal given a (possibly) overcomplete d...
Sparsity plays an essential role in a number of modern algorithms. This thesis examines how we can i...
Pragmatism is the leading motivation of regularization. We can understand regularization as a modifi...
<p>The concept of sparseness is harnessed to learn a low dimensional representation of high dimensio...
Sparsity is a fundamental concept of modern statistics, and often the only general principle availab...
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 ...
In many problem settings, parameter vectors are not merely sparse, but depen-dent in such a way that...
Sparsity-promoting prior along with Bayesian inference is an effective approach in solving sparse li...
Recent theoretical and experimental work in imaging neuroscience reveals that activations inferred f...