<p>For a variety of regularized optimization problems in machine learning, algorithms computing the entire solution path have been developed recently. Most of these methods are quadratic programs that are parameterized by a single parameter, as for example the Support Vector Machine (SVM). Solution path algorithms do not only compute the solution for one particular value of the regularization parameter but the entire path of solutions, making the selection of an optimal parameter much easier.</p><p>It has been assumed that these piecewise linear solution paths have only linear complexity, i.e. linearly many bends. We prove that for the support vector machine this complexity can be exponential in the number of training points in the worst ca...
In a recent paper Joachims [1] presented SVM-Perf, a cutting plane method (CPM) for training linear ...
Conference of 22nd European Symposium on Artificial Neural Networks, Computational Intelligence and ...
Abstract. We present an optimization framework for graph-regularized multi-task SVMs based on the pr...
For a variety of regularized optimization problems in machine learning, algorithms computing the ent...
One of the fundamental problems in statistical machine learning is the optimization problem under th...
In this paper we argue that the choice of the SVM cost parameter can be critical. We then derive an ...
The Support Vector Machine is a widely used tool for classification. Many e#cient implementations e...
A classical algorithm in classification is the support vector machine (SVM) algorithm. Based on Vapn...
The topic of this dissertation is based on regularization methods and efficient solution path algori...
The support vector machine (SVM) remains a popular classifier for its excellent generalization perfo...
Many recently proposed learning algorithms are clearly inspired by Support Vector Machines. Some of ...
We consider statistical procedures for feature selection defined by a family of regu-larization prob...
Regularization plays a central role in the analysis of modern data, where non-regularized fitting is...
Analysis of the convergence rates of modern convex optimization algorithms can be achived through bi...
The worst-case behaviour of a general class of regularization algorithms is considered in the case w...
In a recent paper Joachims [1] presented SVM-Perf, a cutting plane method (CPM) for training linear ...
Conference of 22nd European Symposium on Artificial Neural Networks, Computational Intelligence and ...
Abstract. We present an optimization framework for graph-regularized multi-task SVMs based on the pr...
For a variety of regularized optimization problems in machine learning, algorithms computing the ent...
One of the fundamental problems in statistical machine learning is the optimization problem under th...
In this paper we argue that the choice of the SVM cost parameter can be critical. We then derive an ...
The Support Vector Machine is a widely used tool for classification. Many e#cient implementations e...
A classical algorithm in classification is the support vector machine (SVM) algorithm. Based on Vapn...
The topic of this dissertation is based on regularization methods and efficient solution path algori...
The support vector machine (SVM) remains a popular classifier for its excellent generalization perfo...
Many recently proposed learning algorithms are clearly inspired by Support Vector Machines. Some of ...
We consider statistical procedures for feature selection defined by a family of regu-larization prob...
Regularization plays a central role in the analysis of modern data, where non-regularized fitting is...
Analysis of the convergence rates of modern convex optimization algorithms can be achived through bi...
The worst-case behaviour of a general class of regularization algorithms is considered in the case w...
In a recent paper Joachims [1] presented SVM-Perf, a cutting plane method (CPM) for training linear ...
Conference of 22nd European Symposium on Artificial Neural Networks, Computational Intelligence and ...
Abstract. We present an optimization framework for graph-regularized multi-task SVMs based on the pr...