Large scale nonlinear support vector machines (SVMs) can be approximated by linear ones using a suitable feature map. The linear SVMs are in general much faster to learn and evaluate (test) than the original nonlinear SVMs. This work introduces explicit feature maps for the additive class of kernels, such as the intersection, Hellinger's, and χ 2 kernels, commonly used in computer vision, and enables their use in large scale problems. In particular, we: 1) provide explicit feature maps for all additive homogeneous kernels along with closed form expression for all common kernels; 2) derive corresponding approximate finite-dimensional feature maps based on a spectral analysis; and 3) quantify the error of the approximation, showing that the e...
Recent developments in computer vision have shown that local features can provide efficient represen...
Abstract We propose linear programming formulations of support vector machines (SVM). Unlike standar...
In this work, we provide an exposition of the support vector machine classifier (SVMC) algorithm. We...
Abstract—For large scale classification tasks, especially in the classification of images, additive ...
Typically, nonlinear Support Vector Machines (SVMs) produce significantly higher classification qual...
Approximating non-linear kernels1 by finite-dimensional feature maps is a popular approach for speed...
Support Vector (SV) Machines combine several techniques from statistics, machine learning and neural...
In this paper, we improve the efficiency of kernelized support vector machine (SVM) for image classi...
© Springer International Publishing AG 2017. Performing predictions using a non-linear support vecto...
Kernels have been a common tool of machine learning and computer vision applications for modeling n...
For classification problems with millions of training examples or dimensions, accuracy, training and...
For classification problems with millions of training examples or dimensions, accuracy, training and...
This paper collects some ideas targeted at advancing our understanding of the feature spaces associa...
Abstract. The tutorial starts with an overview of the concepts of VC dimension and structural risk m...
The kernel trick enables learning of nonlinear decision functions without having to explicitly map t...
Recent developments in computer vision have shown that local features can provide efficient represen...
Abstract We propose linear programming formulations of support vector machines (SVM). Unlike standar...
In this work, we provide an exposition of the support vector machine classifier (SVMC) algorithm. We...
Abstract—For large scale classification tasks, especially in the classification of images, additive ...
Typically, nonlinear Support Vector Machines (SVMs) produce significantly higher classification qual...
Approximating non-linear kernels1 by finite-dimensional feature maps is a popular approach for speed...
Support Vector (SV) Machines combine several techniques from statistics, machine learning and neural...
In this paper, we improve the efficiency of kernelized support vector machine (SVM) for image classi...
© Springer International Publishing AG 2017. Performing predictions using a non-linear support vecto...
Kernels have been a common tool of machine learning and computer vision applications for modeling n...
For classification problems with millions of training examples or dimensions, accuracy, training and...
For classification problems with millions of training examples or dimensions, accuracy, training and...
This paper collects some ideas targeted at advancing our understanding of the feature spaces associa...
Abstract. The tutorial starts with an overview of the concepts of VC dimension and structural risk m...
The kernel trick enables learning of nonlinear decision functions without having to explicitly map t...
Recent developments in computer vision have shown that local features can provide efficient represen...
Abstract We propose linear programming formulations of support vector machines (SVM). Unlike standar...
In this work, we provide an exposition of the support vector machine classifier (SVMC) algorithm. We...