International audienceFeature selection in learning to rank has recently emerged as a crucial issue. Whereas several preprocessing approaches have been proposed, only a few have focused on integrating feature selection into the learning process. In this paper, we propose a general framework for feature selection in learning to rank using support vector machines with a sparse regularization term. We investigate both classical convex regularizations, such as ℓ1 or weighted ℓ1, and nonconvex regularization terms, such as log penalty, minimax concave penalty, or ℓp pseudo-norm with p<;1. Two algorithms are proposed: the first, an accelerated proximal approach for solving the convex problems, and, the second, a reweighted ℓ1 scheme to address no...
Sparse learning problems, known as feature selection problems or variable selection problems, are a ...
<p>We propose a new binary classification and variable selection technique especially designed for h...
We propose a direct approach to learning sparse Support Vector Machine (SVM) prediction models for M...
International audienceFeature selection in learning to rank has recently emerged as a crucial issue....
Feature selection in learning to rank has recently emerged as a crucial issue. Whereas several prepr...
International audienceTo select the most useful and the least redundant features to be used in ranki...
National audienceTo select the most useful and the least redundant features to be used in ranking fu...
International audienceWe develop an exact penalty approach for feature selection in machine learning...
This paper introduces 1 a new support vector machine (SVM) formulation to obtain sparse solutions in...
In the context of support vector machines (SVM), high dimensional input vectors often reduce the com...
We present a feature selection method for solving sparse regularization problem, which hasa composit...
The support vector machine (SVM) is a popular method for classification, well known for finding the ...
National audienceLearning to rank algorithms are dealing with a very large amount of features to aut...
A sparse representation of Support Vector Machines (SVMs) with respect to input features is desirabl...
Thesis: S.M., Massachusetts Institute of Technology, Sloan School of Management, Operations Research...
Sparse learning problems, known as feature selection problems or variable selection problems, are a ...
<p>We propose a new binary classification and variable selection technique especially designed for h...
We propose a direct approach to learning sparse Support Vector Machine (SVM) prediction models for M...
International audienceFeature selection in learning to rank has recently emerged as a crucial issue....
Feature selection in learning to rank has recently emerged as a crucial issue. Whereas several prepr...
International audienceTo select the most useful and the least redundant features to be used in ranki...
National audienceTo select the most useful and the least redundant features to be used in ranking fu...
International audienceWe develop an exact penalty approach for feature selection in machine learning...
This paper introduces 1 a new support vector machine (SVM) formulation to obtain sparse solutions in...
In the context of support vector machines (SVM), high dimensional input vectors often reduce the com...
We present a feature selection method for solving sparse regularization problem, which hasa composit...
The support vector machine (SVM) is a popular method for classification, well known for finding the ...
National audienceLearning to rank algorithms are dealing with a very large amount of features to aut...
A sparse representation of Support Vector Machines (SVMs) with respect to input features is desirabl...
Thesis: S.M., Massachusetts Institute of Technology, Sloan School of Management, Operations Research...
Sparse learning problems, known as feature selection problems or variable selection problems, are a ...
<p>We propose a new binary classification and variable selection technique especially designed for h...
We propose a direct approach to learning sparse Support Vector Machine (SVM) prediction models for M...