The main objective of this work is to investigate the robustness and stability of the behavior of the solutions of the Support Vector Machines model under bounded perturbations of the input data in the feature space. The resulting optimization model is equivalent to a second order cone-programming problem. Specifically those techniques are used both for pattern classification and regression analysis.In the theory of support vector machines learning, it is assumed that the data are precise. However, real world data have uncertainties both in their inputs and outputs. Robust optimization techniques recently have attracted a lot of researchers who are interested in finding solutions to problems dealing with uncertainty, erroneous, or incomplet...
We consider a robust classification problem and show that standard regularized SVM is a special case...
International audienceWe consider the binary classification problem when data are large and subject ...
This letter addresses the robustness problem when learning a large margin classifier in the presence...
We consider regularized support vector machines (SVMs) and show that they are precisely equiva-lent ...
Previous analysis of binary support vector machines (SVMs) has demonstrated a deep connection betwee...
The central theme of the thesis is to study linear and non linear SVM formulations in the presence o...
International audienceThe issue of large scale binary classification when data is subject to random ...
International audienceThe issue of large scale binary classification when data is subject to random ...
Support Vector Machines (SVMs) are a group of supervised learning machines introduced by Vladimir V...
Support Vector Machines (SVMs) are a group of supervised learning machines introduced by Vladimir V...
Support Vector Machines (SVMs) are a group of supervised learning machines introduced by Vladimir V...
Support Vector Machines (SVMs) are a group of supervised learning machines introduced by Vladimir V...
In this paper we study Support Vector Machine(SVM) classifiers in the face of uncertain knowledge se...
In this research, a robust optimization approach applied to support vector regression (SVR) is inves...
International audienceWe consider the binary classification problem when data are large and subject ...
We consider a robust classification problem and show that standard regularized SVM is a special case...
International audienceWe consider the binary classification problem when data are large and subject ...
This letter addresses the robustness problem when learning a large margin classifier in the presence...
We consider regularized support vector machines (SVMs) and show that they are precisely equiva-lent ...
Previous analysis of binary support vector machines (SVMs) has demonstrated a deep connection betwee...
The central theme of the thesis is to study linear and non linear SVM formulations in the presence o...
International audienceThe issue of large scale binary classification when data is subject to random ...
International audienceThe issue of large scale binary classification when data is subject to random ...
Support Vector Machines (SVMs) are a group of supervised learning machines introduced by Vladimir V...
Support Vector Machines (SVMs) are a group of supervised learning machines introduced by Vladimir V...
Support Vector Machines (SVMs) are a group of supervised learning machines introduced by Vladimir V...
Support Vector Machines (SVMs) are a group of supervised learning machines introduced by Vladimir V...
In this paper we study Support Vector Machine(SVM) classifiers in the face of uncertain knowledge se...
In this research, a robust optimization approach applied to support vector regression (SVR) is inves...
International audienceWe consider the binary classification problem when data are large and subject ...
We consider a robust classification problem and show that standard regularized SVM is a special case...
International audienceWe consider the binary classification problem when data are large and subject ...
This letter addresses the robustness problem when learning a large margin classifier in the presence...