Title :
Learning the Structure for Structured Sparsity
Author :
Shervashidze, Nino ; Bach, Francis
Author_Institution :
CBIOCentre for Comput. Biol., PSL-Res. Univ., Paris, France
Abstract :
Structured sparsity has recently emerged in statistics, machine learning and signal processing as a promising paradigm for learning in high-dimensional settings. All existing methods for learning under the assumption of structured sparsity rely on prior knowledge on how to weight (or how to penalize) individual subsets of variables during the subset selection process, which is not available in general. Inferring group weights from data is a key open research problem in structured sparsity. In this paper, we propose a Bayesian approach to the problem of group weight learning. We model the group weights as hyperparameters of heavy-tailed priors on groups of variables and derive an approximate inference scheme to infer these hyperparameters. We empirically show that we are able to recover the model hyperparameters when the data are generated from the model, and we demonstrate the utility of learning weights in synthetic and real denoising problems.
Keywords :
Bayes methods; compressed sensing; image denoising; inference mechanisms; learning (artificial intelligence); Bayesian approach; approximate inference scheme; group weight learning problem; heavy-tailed priors hyperparameter recovery; image denoising; key open research problem; machine learning; real denoising problem; signal processing; structured learning; structured sparsity; subset selection process; synthetic denoising problem; Bayes methods; Biological system modeling; Computational modeling; Data models; Diseases; Probabilistic logic; Signal processing; Bayesian statistics; Gaussian scale mixture; Structured sparsity; probabilistic modeling; super-Gaussian prior; variational inference;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2015.2446432