A chunking procedure [2] utilized in [18] for linear classifiers is proposed here for nonlinear kernel classification of massive datasets. A highly accurate algorithm based on nonlinear support vector machines that utilizes a linear programming formulation [15] is developed here as a completely unconstrained minimization problem [17]. This approach together with chunking leads to a simple and accurate method for generating nonlinear classifiers for a 250000-point dataset that typically exceeds machine capacity when standard linear programming methods such as CPLEX [12] are used. Because a 1-norm support vector machine underlies the proposed method, the approach together with a reduced support vector machine formulation [13] minimizes the nu...
Kernel methods are nonparametric feature extraction techniques that attempt to boost the learning ca...
textMachine learning techniques are now essential for a diverse set of applications in computer visi...
This paper presents a novel algorithm which uses hash bits for efficiently optimizing non-linear ker...
A chunking procedure [2] utilized in [18] for linear classifiers is proposed here for nonlinear kern...
A finite concave minimization algorithm is proposed for constructing kernel classifiers that use a m...
Typically, nonlinear Support Vector Machines (SVMs) produce significantly higher classification qual...
DoctorIn the last decade, the kernel methods have contributed to significantadvances in research are...
In this paper, we improve the efficiency of kernelized support vector machine (SVM) for image classi...
Abstract—For large scale classification tasks, especially in the classification of images, additive ...
Kernel techniques became popular due to and along with the rising success of Support Vector Machines...
Abstract. In this paper, we present an extensive study of the cutting-plane algorithm (CPA) applied ...
With an immense growth in data, there is a great need for training and testing machine learning mode...
We study the use of kernel subspace methods that learn low-dimensional subspace representations for ...
International audienceWe introduce a large margin linear binary classification framework that approx...
Support vector machines (and other ker-nel machines) offer robust modern machine learning methods fo...
Kernel methods are nonparametric feature extraction techniques that attempt to boost the learning ca...
textMachine learning techniques are now essential for a diverse set of applications in computer visi...
This paper presents a novel algorithm which uses hash bits for efficiently optimizing non-linear ker...
A chunking procedure [2] utilized in [18] for linear classifiers is proposed here for nonlinear kern...
A finite concave minimization algorithm is proposed for constructing kernel classifiers that use a m...
Typically, nonlinear Support Vector Machines (SVMs) produce significantly higher classification qual...
DoctorIn the last decade, the kernel methods have contributed to significantadvances in research are...
In this paper, we improve the efficiency of kernelized support vector machine (SVM) for image classi...
Abstract—For large scale classification tasks, especially in the classification of images, additive ...
Kernel techniques became popular due to and along with the rising success of Support Vector Machines...
Abstract. In this paper, we present an extensive study of the cutting-plane algorithm (CPA) applied ...
With an immense growth in data, there is a great need for training and testing machine learning mode...
We study the use of kernel subspace methods that learn low-dimensional subspace representations for ...
International audienceWe introduce a large margin linear binary classification framework that approx...
Support vector machines (and other ker-nel machines) offer robust modern machine learning methods fo...
Kernel methods are nonparametric feature extraction techniques that attempt to boost the learning ca...
textMachine learning techniques are now essential for a diverse set of applications in computer visi...
This paper presents a novel algorithm which uses hash bits for efficiently optimizing non-linear ker...