In a latent variable model, an overcomplete representation is one in which the number of latent variables is at least as large as the dimension of the data observations. Overcomplete representations have been advocated due to robustness in the presence of noise, the ability to be sparse, and an inherent flexibility in modeling the structure of data [9]. In this report, we modify factor analysis to obtain a method for learning overcomplete sparse representations by replacing the Gaussian prior on the factors with a prior that encourages sparseness. This is achieved by using the factorable Laplacian, which implicitly adds a lasso-type penalty term on the latent variables. In order to approximate the intractable integrals introduced into this ...
This paper addresses the problem of identifying a lower dimensional space where observed data can be...
Submitted to EUSIPCO 2011International audienceWe consider the problem of learning a low-dimensional...
Submitted to EUSIPCO 2011International audienceWe consider the problem of learning a low-dimensional...
An expectation-maximization algorithm for learning sparse and overcomplete data representations is p...
An expectation-maximization algorithm for learning sparse and overcomplete data representations is p...
An expectation-maximization (EM) algorithm for learning sparse and overcomplete representations is p...
We provide guarantees for learning latent variable models emphasizing on the overcomplete regime, wh...
An algorithm for learning an overcomplete dictionary using a Cauchy mixture model for sparse decompo...
Bayesian sparse factor analysis has many applications; for example, it has been applied to the probl...
Bayesian sparse factor analysis has many applications; for example, it has been applied to the probl...
Bayesian sparse factor analysis has many applications; for example, it has been applied to the probl...
Bayesian sparse factor analysis has many applications; for example, it has been applied to the probl...
Mixture models are widely used to fit complex and multimodal datasets. In this paper we study mixtur...
Probabilistic mixture model is a powerful tool to provide a low-dimensional representation of count ...
Probabilistic mixture model is a powerful tool to provide a low-dimensional representation of count ...
This paper addresses the problem of identifying a lower dimensional space where observed data can be...
Submitted to EUSIPCO 2011International audienceWe consider the problem of learning a low-dimensional...
Submitted to EUSIPCO 2011International audienceWe consider the problem of learning a low-dimensional...
An expectation-maximization algorithm for learning sparse and overcomplete data representations is p...
An expectation-maximization algorithm for learning sparse and overcomplete data representations is p...
An expectation-maximization (EM) algorithm for learning sparse and overcomplete representations is p...
We provide guarantees for learning latent variable models emphasizing on the overcomplete regime, wh...
An algorithm for learning an overcomplete dictionary using a Cauchy mixture model for sparse decompo...
Bayesian sparse factor analysis has many applications; for example, it has been applied to the probl...
Bayesian sparse factor analysis has many applications; for example, it has been applied to the probl...
Bayesian sparse factor analysis has many applications; for example, it has been applied to the probl...
Bayesian sparse factor analysis has many applications; for example, it has been applied to the probl...
Mixture models are widely used to fit complex and multimodal datasets. In this paper we study mixtur...
Probabilistic mixture model is a powerful tool to provide a low-dimensional representation of count ...
Probabilistic mixture model is a powerful tool to provide a low-dimensional representation of count ...
This paper addresses the problem of identifying a lower dimensional space where observed data can be...
Submitted to EUSIPCO 2011International audienceWe consider the problem of learning a low-dimensional...
Submitted to EUSIPCO 2011International audienceWe consider the problem of learning a low-dimensional...