Group LASSO is widely used to enforce the structural sparsity, which achieves the sparsity at the inter-group level. In this paper, we propose a new formulation called “exclusive group LASSO”, which brings out sparsity at intra-group level in the context of feature selection. The proposed exclusive group LASSO is applica-ble on any feature structures, regardless of their overlapping or non-overlapping structures. We provide analysis on the properties of exclusive group LASSO, and propose an effective iteratively re-weighted algorithm to solve the corresponding optimization problem with rigorous convergence analysis. We show applications of exclusive group LASSO for uncorrelated feature selection. Extensive experi-ments on both synthetic and...
In this paper, we are concerned with regression problems where covariates can be grouped in nonoverl...
International audienceIn this paper, we are concerned with regression problems where covariates can ...
Recent work has focused on the problem of conducting linear regression when the number of covariates...
Group LASSO is widely used to enforce the structural sparsity, which achieves the sparsity at the in...
l2,1-norm is an effective regularization to enforce a simple group sparsity for feature learning. To...
The paper considers supervised learning problems of labeled data with grouped input features. The gr...
Binary logistic regression with a sparsity constraint on the solution plays a vital role in many hig...
Sparse learning problems, known as feature selection problems or variable selection problems, are a ...
A structured variable selection problem is considered in which the covariates, divided into predefin...
Today, sparsity techniques have been widely used to address practical problems in the fields of medi...
The group Lasso is an extension of the Lasso for feature selection on (predefined) non-overlapping g...
We present a data dependent generalization bound for a large class of regularized algorithms which i...
© 2012 IEEE. Feature selection (FS) is an important component of many pattern recognition tasks. In ...
International audienceWe consider the problems of estimation and selection of parameters endowed wit...
Regularization technique has become a principled tool for statistics and machine learning research a...
In this paper, we are concerned with regression problems where covariates can be grouped in nonoverl...
International audienceIn this paper, we are concerned with regression problems where covariates can ...
Recent work has focused on the problem of conducting linear regression when the number of covariates...
Group LASSO is widely used to enforce the structural sparsity, which achieves the sparsity at the in...
l2,1-norm is an effective regularization to enforce a simple group sparsity for feature learning. To...
The paper considers supervised learning problems of labeled data with grouped input features. The gr...
Binary logistic regression with a sparsity constraint on the solution plays a vital role in many hig...
Sparse learning problems, known as feature selection problems or variable selection problems, are a ...
A structured variable selection problem is considered in which the covariates, divided into predefin...
Today, sparsity techniques have been widely used to address practical problems in the fields of medi...
The group Lasso is an extension of the Lasso for feature selection on (predefined) non-overlapping g...
We present a data dependent generalization bound for a large class of regularized algorithms which i...
© 2012 IEEE. Feature selection (FS) is an important component of many pattern recognition tasks. In ...
International audienceWe consider the problems of estimation and selection of parameters endowed wit...
Regularization technique has become a principled tool for statistics and machine learning research a...
In this paper, we are concerned with regression problems where covariates can be grouped in nonoverl...
International audienceIn this paper, we are concerned with regression problems where covariates can ...
Recent work has focused on the problem of conducting linear regression when the number of covariates...