DocumentCode :
1434214
Title :
Should Penalized Least Squares Regression be Interpreted as Maximum A Posteriori Estimation?
Author :
Gribonval, Rémi
Author_Institution :
Centre Inria Rennes-Bretagne Atlantique, Rennes, France
Volume :
59
Issue :
5
fYear :
2011
fDate :
5/1/2011 12:00:00 AM
Firstpage :
2405
Lastpage :
2410
Abstract :
Penalized least squares regression is often used for signal denoising and inverse problems, and is commonly interpreted in a Bayesian framework as a Maximum a posteriori (MAP) estimator, the penalty function being the negative logarithm of the prior. For example, the widely used quadratic program (with an l1 penalty) associated to the LASSO/basis pursuit denoising is very often considered as MAP estimation under a Laplacian prior in the context of additive white Gaussian noise (AWGN) reduction. This paper highlights the fact that, while this is one possible Bayesian interpretation, there can be other equally acceptable Bayesian interpretations. Therefore, solving a penalized least squares regression problem with penalty φ(x) need not be interpreted as assuming a prior C·exp(-φ(x)) and using the MAP estimator. In particular, it is shown that for any prior PX, the minimum mean-square error (MMSE) estimator is the solution of a penalized least square problem with some penalty φ(x) , which can be interpreted as the MAP estimator with the prior C·exp(-φ(x)). Vice versa, for certain penalties φ(x), the solution of the penalized least squares problem is indeed the MMSE estimator, with a certain prior PX . In general dPX(x) ≠ C·exp(-φ(x))dx.
Keywords :
AWGN; inverse problems; least squares approximations; maximum likelihood estimation; mean square error methods; regression analysis; signal denoising; Bayesian framework; LASSO; Laplacian prior; additive white Gaussian noise reduction; basis pursuit denoising; inverse problems; maximum a posteriori estimation; minimum mean-square error estimator; penalized least squares regression; signal denoising; Bayesian methods; Inverse problems; Least squares approximation; Noise measurement; Noise reduction; Optimization; Springs; Bayesian methods; maximum a posteriori estimation; mean-square error methods; signal denoising;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2011.2107908
Filename :
5699941
Link To Document :
بازگشت