none4siRecently, there has been a renewed interest in the machine learning community for variants of a sparse greedy approximation procedure for concave optimization known as the Frank–Wolfe (FW) method. In particular, this procedure has been successfully applied to train large-scale instances of non-linear Support Vector Machines (SVMs). Specializing FW to SVM training has allowed to obtain efficient algorithms, but also important theoretical results, including convergence analysis of training algorithms and new characterizations of model sparsity. In this paper, we present and analyze a novel variant of the FW method based on a new way to perform away steps, a classic strategy used to accelerate the convergence of the basic FW procedure....
This work studies an optimization scheme for computing sparse approximate solutions of over-determin...
Most literature on Support Vector Machines (SVMs) concentrate on the dual optimization problem. In t...
Training machine learning models sometimes needs to be done on large amounts of data that exceed the...
Recently, there has been a renewed interest in the machine learning community for variants of a spar...
This work deals with the Support Vector Machine (SVM) learning process which, as it is well-known, c...
Training a support vector machine (SVM) requires the solution of a quadratic programming problem (QP...
It has been shown that many kernel methods can be equivalently formulated as minimal enclosing ball ...
Training a Support Vector Machine (SVM) requires the solution of a quadratic programming problem (QP...
Thesis (Ph.D.)--Massachusetts Institute of Technology, Dept. of Mathematics, 2002.Includes bibliogra...
In a recent paper Joachims [1] presented SVM-Perf, a cutting plane method (CPM) for training linear ...
The support vector regression (SVR) model is usually fitted by solving a quadratic programming probl...
Concave-Convex Procedure (CCCP) has been widely used to solve nonconvex d.c.(difference of convex fu...
We present a fast iterative support vector training algorithm for a large variety of different formu...
Training a Support Vector Machine (SVM) requires the solution of a very large quadratic programming...
We propose a novel partial linearization based approach for optimizing the multi-class svm learning ...
This work studies an optimization scheme for computing sparse approximate solutions of over-determin...
Most literature on Support Vector Machines (SVMs) concentrate on the dual optimization problem. In t...
Training machine learning models sometimes needs to be done on large amounts of data that exceed the...
Recently, there has been a renewed interest in the machine learning community for variants of a spar...
This work deals with the Support Vector Machine (SVM) learning process which, as it is well-known, c...
Training a support vector machine (SVM) requires the solution of a quadratic programming problem (QP...
It has been shown that many kernel methods can be equivalently formulated as minimal enclosing ball ...
Training a Support Vector Machine (SVM) requires the solution of a quadratic programming problem (QP...
Thesis (Ph.D.)--Massachusetts Institute of Technology, Dept. of Mathematics, 2002.Includes bibliogra...
In a recent paper Joachims [1] presented SVM-Perf, a cutting plane method (CPM) for training linear ...
The support vector regression (SVR) model is usually fitted by solving a quadratic programming probl...
Concave-Convex Procedure (CCCP) has been widely used to solve nonconvex d.c.(difference of convex fu...
We present a fast iterative support vector training algorithm for a large variety of different formu...
Training a Support Vector Machine (SVM) requires the solution of a very large quadratic programming...
We propose a novel partial linearization based approach for optimizing the multi-class svm learning ...
This work studies an optimization scheme for computing sparse approximate solutions of over-determin...
Most literature on Support Vector Machines (SVMs) concentrate on the dual optimization problem. In t...
Training machine learning models sometimes needs to be done on large amounts of data that exceed the...