We propose a method to efficiently construct data-dependent kernels which can make use of large quantities of (unlabeled) data. Our construction makes an approximation in the standard construction of semi-supervised kernels in Sindhwani et al. (2005). In typical cases these kernels can be computed in nearly-linear time (in the amount of data), improving on the cubic time of the standard construction, enabling large scale semi-supervised learning in a variety of contexts. The methods are validated on semi-supervised and unsupervised problems on data sets containing upto 64’000 sample points.
Abstract We introduce scalable deep kernels, which combine the structural properties of deep learnin...
Abstract — The goal of semisupervised kernel matrix learning (SS-KML) is to learn a kernel matrix on...
Abstract For existing kernel learning based semi-supervised clustering algorithms, it is generally d...
Learning a computationally efficient kernel from data is an important machine learning problem. The ...
We present an algorithm based on convex optimization for constructing kernels for semi-supervised le...
This paper deals with the problem of semi-supervised learning using a small number of training sampl...
One approach to improving the running time of kernel-based machine learning methods is to build a sm...
We present an algorithm based on convex optimization for constructing kernels for semi-supervised le...
© 2014 IEEE. Often in practice one deals with a large amount of unlabeled data, while the fraction o...
In this paper we propose a framework for supervised and semi-supervised learning based on reformulat...
Traditional machine learning has been largely concerned with developing techniques for small or mode...
We present an algorithm based on convex optimization for constructing kernels for semi-supervised l...
Kernel selection is a central issue in kernel methods of machine learning. In this paper, we investi...
The main contribution of the thesis is the development of a fast library for approximating kernel ex...
We consider a framework for semi-supervised learning using spectral decomposition based un-supervise...
Abstract We introduce scalable deep kernels, which combine the structural properties of deep learnin...
Abstract — The goal of semisupervised kernel matrix learning (SS-KML) is to learn a kernel matrix on...
Abstract For existing kernel learning based semi-supervised clustering algorithms, it is generally d...
Learning a computationally efficient kernel from data is an important machine learning problem. The ...
We present an algorithm based on convex optimization for constructing kernels for semi-supervised le...
This paper deals with the problem of semi-supervised learning using a small number of training sampl...
One approach to improving the running time of kernel-based machine learning methods is to build a sm...
We present an algorithm based on convex optimization for constructing kernels for semi-supervised le...
© 2014 IEEE. Often in practice one deals with a large amount of unlabeled data, while the fraction o...
In this paper we propose a framework for supervised and semi-supervised learning based on reformulat...
Traditional machine learning has been largely concerned with developing techniques for small or mode...
We present an algorithm based on convex optimization for constructing kernels for semi-supervised l...
Kernel selection is a central issue in kernel methods of machine learning. In this paper, we investi...
The main contribution of the thesis is the development of a fast library for approximating kernel ex...
We consider a framework for semi-supervised learning using spectral decomposition based un-supervise...
Abstract We introduce scalable deep kernels, which combine the structural properties of deep learnin...
Abstract — The goal of semisupervised kernel matrix learning (SS-KML) is to learn a kernel matrix on...
Abstract For existing kernel learning based semi-supervised clustering algorithms, it is generally d...