Feature selection plays an important role in many machine learning and data mining applications. In this paper, we propose to use L2,p norm for feature selection with emphasis on small p. As p approaches 0, feature selection becomes discrete feature selection problem. We provide two algorithms, proximal gradient algorithm and rank one update algorithm, which is more efficient at large regularization. We provide closed form solutions of the proximal operator at p = 0, 1/2. Experiments onreal life datasets show that features selected at small p consistently outperform features selected at p = 1, the standard L2,1 approach and other popular feature selection methods
We present a feature selection method for solving sparse regularization problem, which hasa composit...
LASSO and ℓ2,1-norm based feature selection had achieved success in many application areas. In this ...
Least Squares Support Vector Machines (LSSVM) perform classification using L2-norm on the weight vec...
22nd International Conference on Pattern Recognition, ICPR 2014, Sweden, 24-28 August 2014This paper...
Feature selection is an important component of many machine learning applica-tions. Especially in ma...
Sparse learning based feature selection has been widely investigated in recent years. In this study,...
Feature selection methods are used in machine learning and data analysis to select a subset of featu...
Feature selection methods are used in machine learning and data analysis to select a subset of featu...
Abstract: The l1-norm regularization is commonly used when estimating (generalized) lin-ear models w...
Our objective is to develop formulations and al-gorithms for efficiently computing the feature se-le...
A variety of feature selection methods based on sparsity regularization have been developed with dif...
The problem of selecting a subset of relevant features in a potentially overwhelming quantity of dat...
Algorithms for feature selection fall into two broad categories: wrappers use the learning algorithm...
This thesis addresses the problem of feature selection in pattern recognition. A detailed analysis a...
International audienceWe develop an exact penalty approach for feature selection in machine learning...
We present a feature selection method for solving sparse regularization problem, which hasa composit...
LASSO and ℓ2,1-norm based feature selection had achieved success in many application areas. In this ...
Least Squares Support Vector Machines (LSSVM) perform classification using L2-norm on the weight vec...
22nd International Conference on Pattern Recognition, ICPR 2014, Sweden, 24-28 August 2014This paper...
Feature selection is an important component of many machine learning applica-tions. Especially in ma...
Sparse learning based feature selection has been widely investigated in recent years. In this study,...
Feature selection methods are used in machine learning and data analysis to select a subset of featu...
Feature selection methods are used in machine learning and data analysis to select a subset of featu...
Abstract: The l1-norm regularization is commonly used when estimating (generalized) lin-ear models w...
Our objective is to develop formulations and al-gorithms for efficiently computing the feature se-le...
A variety of feature selection methods based on sparsity regularization have been developed with dif...
The problem of selecting a subset of relevant features in a potentially overwhelming quantity of dat...
Algorithms for feature selection fall into two broad categories: wrappers use the learning algorithm...
This thesis addresses the problem of feature selection in pattern recognition. A detailed analysis a...
International audienceWe develop an exact penalty approach for feature selection in machine learning...
We present a feature selection method for solving sparse regularization problem, which hasa composit...
LASSO and ℓ2,1-norm based feature selection had achieved success in many application areas. In this ...
Least Squares Support Vector Machines (LSSVM) perform classification using L2-norm on the weight vec...