Abstract. Support Vector Machines nd maximal margin hyperplanes in a high dimensional feature space, represented as a sparse linear com-bination of training points. Theoretical results exist which guarantee a high generalization performance when the margin is large or when the representation is very sparse. Multiplicative-Updating algorithms are a new tool for perceptron learning which are guaranteed to converge rapidly when the target concept is sparse. In this paper we present a Multiplicative-Updating algorithm for training Support Vector Machines which combines the generalization power provided by VC theory with the convergence properties of multiplicative algorithms. 1
We present a new class of perceptron-like algorithms with margin in which the “effective” learning r...
© 2005 IEEE. This is a publishers version of an article published in IEEE Transactions on Neural Ne...
Abstract. The well-known and very simple MinOver algorithm is reformulated for incremental support v...
The training of support vector machines (SVM) involves a quadratic programming problem, which is oft...
The dual formulation of the support vector machine (SVM) objective function is an instance of a nonn...
We present a fast iterative support vector training algorithm for a large variety of different formu...
We derive multiplicative updates for solving the nonnegative quadratic programming problem in suppor...
We derive multiplicative updates for solving the nonnegative quadratic programming problem in suppor...
Abstract. We propose to study links between three important classification algorithms: Perceptrons, ...
It has been shown that many kernel methods can be equivalently formulated as minimal enclosing ball ...
We present a new method for the incremental train-ing of multiclass Support Vector Machines that pro...
A new incremental learning algorithm is described which approximates the maximal margin hyperplane ...
We present new decomposition algorithms for training multi-class support vector machines (SVMs), in ...
In this paper we propose a new learning algorithm for classication learning based on the Support Vec...
The Support Vector Machine (SVM) is found to de a capable learning machine. It has the ability to ha...
We present a new class of perceptron-like algorithms with margin in which the “effective” learning r...
© 2005 IEEE. This is a publishers version of an article published in IEEE Transactions on Neural Ne...
Abstract. The well-known and very simple MinOver algorithm is reformulated for incremental support v...
The training of support vector machines (SVM) involves a quadratic programming problem, which is oft...
The dual formulation of the support vector machine (SVM) objective function is an instance of a nonn...
We present a fast iterative support vector training algorithm for a large variety of different formu...
We derive multiplicative updates for solving the nonnegative quadratic programming problem in suppor...
We derive multiplicative updates for solving the nonnegative quadratic programming problem in suppor...
Abstract. We propose to study links between three important classification algorithms: Perceptrons, ...
It has been shown that many kernel methods can be equivalently formulated as minimal enclosing ball ...
We present a new method for the incremental train-ing of multiclass Support Vector Machines that pro...
A new incremental learning algorithm is described which approximates the maximal margin hyperplane ...
We present new decomposition algorithms for training multi-class support vector machines (SVMs), in ...
In this paper we propose a new learning algorithm for classication learning based on the Support Vec...
The Support Vector Machine (SVM) is found to de a capable learning machine. It has the ability to ha...
We present a new class of perceptron-like algorithms with margin in which the “effective” learning r...
© 2005 IEEE. This is a publishers version of an article published in IEEE Transactions on Neural Ne...
Abstract. The well-known and very simple MinOver algorithm is reformulated for incremental support v...