Title :
Sparse linear regression in unions of bases via Bayesian variable selection
Author :
Févotte, Cédric ; Godsill, Simon J.
Author_Institution :
Dept. of Eng., Cambridge Univ.
fDate :
7/1/2006 12:00:00 AM
Abstract :
In this letter, we propose an approach for sparse linear regression in unions of bases inspired by Bayesian variable selection. Conditionally upon an indicator variable that is 0 or 1, one expansion coefficient of the signal corresponding to one atom of the dictionary is either set to zero or given a Student t prior. A Gibbs sampler (a standard Markov chain Monte Carlo technique) is used to sample from the posterior distribution of the indicator variables, the expansion coefficients (corresponding to nonzero indicator variables), the hyperparameters of the Student t priors, and the variance of the residual signal. The structure of the dictionary, assumed to be a union of bases, allows for alternate sampling of the indicator variables and the expansion coefficients from each basis and avoids any large matrix inversion. Our method is applied to the denoising problem of a piano sequence, using a dual-resolution union of two modified discrete cosine transform bases
Keywords :
Bayes methods; discrete cosine transforms; matrix inversion; regression analysis; signal denoising; signal resolution; signal sampling; sparse matrices; Bayesian variable selection; Gibbs sampler; denoising problem; discrete cosine transform; dual-resolution union; expansion coefficient; indicator variable; matrix inversion; piano sequence; posterior distribution; sparse linear regression; Bayesian methods; Dictionaries; Discrete cosine transforms; Input variables; Linear regression; Matching pursuit algorithms; Noise reduction; Signal processing; Signal processing algorithms; Sparse matrices; Bayesian variable selection; Markov chain Monte Carlo methods; denoising; nonlinear signal approximation; sparse regression; sparse representations;
Journal_Title :
Signal Processing Letters, IEEE
DOI :
10.1109/LSP.2006.873139