Sparse Regression Using Mixed Norms
Kowalski, Matthieu
HAL, hal-00202904 / Harvested from HAL
Mixed norms are used to exploit in an easy way, both structure and sparsity in the framework of regression problems, and introduce implicitly couplings between regression coefficients. Regression is done through optimization problems, and corresponding algorithms are described and analyzed. Beside the classical sparse regression problem, multi-layered expansion on unions of dictionaries of signals are also considered. These sparse structured expansions are done subject to an exact reconstruction constraint, using a modified FOCUSS algorithm. When the mixed norms are used in the framework of regularized inverse problem, a thresholded Landweber iteration is used to minimize the corresponding variational problem.
Publié le : 2009-09-12
Classification:  Sparse regression,  Structured regression,  Mixed norms,  FOCUSS,  Thresholded Landweber iterations,  [SPI.SIGNAL]Engineering Sciences [physics]/Signal and Image processing,  [MATH.MATH-OC]Mathematics [math]/Optimization and Control [math.OC],  [INFO.INFO-TS]Computer Science [cs]/Signal and Image Processing
@article{hal-00202904,
     author = {Kowalski, Matthieu},
     title = {Sparse Regression Using Mixed Norms},
     journal = {HAL},
     volume = {2009},
     number = {0},
     year = {2009},
     language = {en},
     url = {http://dml.mathdoc.fr/item/hal-00202904}
}
Kowalski, Matthieu. Sparse Regression Using Mixed Norms. HAL, Tome 2009 (2009) no. 0, . http://gdmltest.u-ga.fr/item/hal-00202904/