International audienceThis work describes a framework for solving support vector machine with kernel (SVMK). Recently, it has been proved that the use of non-smooth loss function for supervised learning problem gives more efficient results [1]. This gives the idea of solving the SVMK problem based on hinge loss function. However, the hinge loss function is non-differentiable (we can’t use the standard optimization methods to minimize the empirical risk). To overcome this difficulty, a special smoothing technique for the hinge loss is proposed. Thus, the obtained smooth problem combined with Tikhonov regularization is solved using a stochastic gradient descent method. Finally, some numerical experiments on academic and real-life datasets are...
We present a novel method for learning Support Vector Machines (SVMs) in the online setting. Our met...
Support Vector (SV) Machines combine several techniques from statistics, machine learning and neural...
Pegasos has become a widely acknowledged algorithm for learning linear Support Vector Machines. It u...
International audienceThis work describes a framework for solving support vector machine with kernel...
This letter addresses the robustness problem when learning a large margin classifier in the presence...
We review the role played by non-smooth optimization techniques in many recent applications in class...
We review the role played by non-smooth optimization techniques in many recent applications in class...
A classical algorithm in classification is the support vector machine (SVM) algorithm. Based on Vapn...
A semi-supervised vector machine is a relatively new learning method using both labeled and unlabele...
In this work, the classical soft-margin Support Vector Machine (SVM) formulation is redefined with t...
It is well-known that the support vector machine paradigm is equivalent to solv-ing a regularization...
The objective of this study is to minimize the classification cost using Support Vector Machines (SV...
Abstract. Support vector machine (SVM) is a very popular method for bi-nary data classification in d...
Abstract: ε-support vector regression (ε-SVR) can be converted into an unconstrained convex and non-...
© 2018 Elsevier B.V. In this work, the classical soft-margin Support Vector Machine (SVM) formulatio...
We present a novel method for learning Support Vector Machines (SVMs) in the online setting. Our met...
Support Vector (SV) Machines combine several techniques from statistics, machine learning and neural...
Pegasos has become a widely acknowledged algorithm for learning linear Support Vector Machines. It u...
International audienceThis work describes a framework for solving support vector machine with kernel...
This letter addresses the robustness problem when learning a large margin classifier in the presence...
We review the role played by non-smooth optimization techniques in many recent applications in class...
We review the role played by non-smooth optimization techniques in many recent applications in class...
A classical algorithm in classification is the support vector machine (SVM) algorithm. Based on Vapn...
A semi-supervised vector machine is a relatively new learning method using both labeled and unlabele...
In this work, the classical soft-margin Support Vector Machine (SVM) formulation is redefined with t...
It is well-known that the support vector machine paradigm is equivalent to solv-ing a regularization...
The objective of this study is to minimize the classification cost using Support Vector Machines (SV...
Abstract. Support vector machine (SVM) is a very popular method for bi-nary data classification in d...
Abstract: ε-support vector regression (ε-SVR) can be converted into an unconstrained convex and non-...
© 2018 Elsevier B.V. In this work, the classical soft-margin Support Vector Machine (SVM) formulatio...
We present a novel method for learning Support Vector Machines (SVMs) in the online setting. Our met...
Support Vector (SV) Machines combine several techniques from statistics, machine learning and neural...
Pegasos has become a widely acknowledged algorithm for learning linear Support Vector Machines. It u...