The LASSO sparse regression method has recently received attention in a variety of applications from image compression techniques to parameter estimation problems. This paper addresses the problem of regularization parameter selection in this method in a general case of complex-valued regressors and bases. Generally, this parameter controls the degree of sparsity or equivalently, the estimated model order. However, with the same sparsity/model order, the smallest regularization parameter is desired. We relate such points to the nonsmooth points in the path of LASSO solutions and give an analytical expression for them. Then, we introduce a numerically fast method of approximating the desired points by a recursive algorithm. The procedure dec...
Sparsity-based estimation techniques deal with the problem of retrieving a data vector from an under...
There has been a surge of interest in learning non-linear manifold models to approximate high-dimens...
International audienceThis paper tackles the problem of model complexity in the context of additive ...
The LASSO sparse regression method has recently received attention in a variety of applications from...
Since the advent of the l(1) regularized least squares method (LASSO), a new line of research has em...
In many practical situations, it is highly desirable to estimate an accurate mathematical model of a...
The SPS-LASSO has recently been introduced as a solution to the problem of regularization parameter ...
The Lasso is an attractive regularisation method for high-dimensional regression. It combines variab...
We consider a linear regression problem in a high dimensional setting where the number of covariates...
Regression with L1-regularization, Lasso, is a popular algorithm for recovering the sparsity pattern...
The lasso algorithm for variable selection in linear models, intro- duced by Tibshirani, works by im...
International audienceIn high dimensional settings, sparse structures are crucial for efficiency, bo...
This letter gives an efficient algorithm for tracking the solution curve of sparse logistic regressi...
International audienceLeveraging on the convexity of the Lasso problem , screening rules help in acc...
The lasso algorithm for variable selection in linear models, introduced by Tibshirani, works by impo...
Sparsity-based estimation techniques deal with the problem of retrieving a data vector from an under...
There has been a surge of interest in learning non-linear manifold models to approximate high-dimens...
International audienceThis paper tackles the problem of model complexity in the context of additive ...
The LASSO sparse regression method has recently received attention in a variety of applications from...
Since the advent of the l(1) regularized least squares method (LASSO), a new line of research has em...
In many practical situations, it is highly desirable to estimate an accurate mathematical model of a...
The SPS-LASSO has recently been introduced as a solution to the problem of regularization parameter ...
The Lasso is an attractive regularisation method for high-dimensional regression. It combines variab...
We consider a linear regression problem in a high dimensional setting where the number of covariates...
Regression with L1-regularization, Lasso, is a popular algorithm for recovering the sparsity pattern...
The lasso algorithm for variable selection in linear models, intro- duced by Tibshirani, works by im...
International audienceIn high dimensional settings, sparse structures are crucial for efficiency, bo...
This letter gives an efficient algorithm for tracking the solution curve of sparse logistic regressi...
International audienceLeveraging on the convexity of the Lasso problem , screening rules help in acc...
The lasso algorithm for variable selection in linear models, introduced by Tibshirani, works by impo...
Sparsity-based estimation techniques deal with the problem of retrieving a data vector from an under...
There has been a surge of interest in learning non-linear manifold models to approximate high-dimens...
International audienceThis paper tackles the problem of model complexity in the context of additive ...