International audienceMost kernel-based methods, such as kernel regression, kernel PCA, ICA, or k-means clustering, do not scale to large datasets, because constructing and storing the kernel matrix Kn requires at least O(n2) time and space for n samples. Recent works (Alaoui 2014, Musco 2016) show that sampling points with replacement according to their ridge leverage scores (RLS) generates small dictionaries of relevant points with strong spectral approximation guarantees for Kn. The drawback of RLS-based methods is that computing exact RLS requires constructing and storing the whole kernel matrix. In this paper, we introduce SQUEAK, a new algorithm for kernel approximation based on RLS sampling that sequentially processes the dataset, st...
Dictionary Learning (DL) has seen widespread use in signal processing and machine learning. Given a ...
Dictionary Learning (DL) has seen widespread use in signal processing and machine learning. Given a ...
Despite their theoretical appeal and grounding in tractable convex optimization techniques, kernel m...
International audienceMost kernel-based methods, such as kernel regression, kernel PCA, ICA, or k-me...
International audienceMost kernel-based methods, such as kernel or Gaussian process regression, kern...
One approach to improving the running time of kernel-based machine learning methods is to build a sm...
International audienceLarge-scale kernel ridge regression (KRR) is limited by the need to store a la...
The main advantage of non-parametric models is that the accuracy of the model (degreesof freedom) ad...
The main advantage of non-parametric models is that the accuracy of the model (degreesof freedom) ad...
Kernel methods are a well-studied approach for addressing regression problems by implicitly mapping ...
The problem of estimating the kernel mean in a reproducing kernel Hilbert space (RKHS) is central to...
The problem of estimating the kernel mean in a reproducing kernel Hilbert space (RKHS) is central to...
We present memory-efficient and scalable algorithms for kernel methods used in machine learning. Usi...
We present memory-efficient and scalable algorithms for kernel methods used in machine learning. Usi...
The problem of estimating the kernel mean in a reproducing kernel Hilbert space (RKHS) is central to...
Dictionary Learning (DL) has seen widespread use in signal processing and machine learning. Given a ...
Dictionary Learning (DL) has seen widespread use in signal processing and machine learning. Given a ...
Despite their theoretical appeal and grounding in tractable convex optimization techniques, kernel m...
International audienceMost kernel-based methods, such as kernel regression, kernel PCA, ICA, or k-me...
International audienceMost kernel-based methods, such as kernel or Gaussian process regression, kern...
One approach to improving the running time of kernel-based machine learning methods is to build a sm...
International audienceLarge-scale kernel ridge regression (KRR) is limited by the need to store a la...
The main advantage of non-parametric models is that the accuracy of the model (degreesof freedom) ad...
The main advantage of non-parametric models is that the accuracy of the model (degreesof freedom) ad...
Kernel methods are a well-studied approach for addressing regression problems by implicitly mapping ...
The problem of estimating the kernel mean in a reproducing kernel Hilbert space (RKHS) is central to...
The problem of estimating the kernel mean in a reproducing kernel Hilbert space (RKHS) is central to...
We present memory-efficient and scalable algorithms for kernel methods used in machine learning. Usi...
We present memory-efficient and scalable algorithms for kernel methods used in machine learning. Usi...
The problem of estimating the kernel mean in a reproducing kernel Hilbert space (RKHS) is central to...
Dictionary Learning (DL) has seen widespread use in signal processing and machine learning. Given a ...
Dictionary Learning (DL) has seen widespread use in signal processing and machine learning. Given a ...
Despite their theoretical appeal and grounding in tractable convex optimization techniques, kernel m...