SpotlightInternational audienceSketching and stochastic gradient methods are arguably the most common techniques to derive efficient large scale learning algorithms. In this paper, we investigate their application in the context of nonparametric statistical learning. More precisely, we study the estimator defined by stochastic gradient with mini batches and random features. The latter can be seen as form of nonlinear sketching and used to define approximate kernel methods. The considered estimator is not explicitly penalized/constrained and regularization is implicit. Indeed, our study highlights how different parameters, such as number of features, iterations, step-size and mini-batch size control the learning properties of the solutions. ...
We study the problem of learning-to-learn: inferring a learning algorithm that works well on tasks s...
We consider the minimization of an objective function given access to unbiased estimates of its grad...
Statistical inference, such as hypothesis testing and calculating a confidence interval, is an impor...
SpotlightInternational audienceSketching and stochastic gradient methods are arguably the most commo...
We analyze the learning properties of the stochastic gradient method when multiple passes over the d...
We analyze the learning properties of the stochastic gradient method when multiple passes over the d...
Stochastic gradient descent (SGD) and its variants have established themselves as the go-to algorith...
AbstractWe propose a stochastic gradient descent algorithm for learning the gradient of a regression...
We consider the random-design least-squares regression problem within the reproducing kernel Hilbert...
We study generalization properties of random features (RF) regression in high dimensions optimized b...
We study the generalization properties of ridge regression with random features in the statistical l...
We study generalization properties of distributed algorithms in the setting of nonparametric regress...
AbstractVarious appealing ideas have been recently proposed in the statistical literature to scale-u...
In recent studies, the generalization properties for distributed learning and random features assume...
Stochastic descent methods (of the gradient and mirror varieties) have become increasingly popular i...
We study the problem of learning-to-learn: inferring a learning algorithm that works well on tasks s...
We consider the minimization of an objective function given access to unbiased estimates of its grad...
Statistical inference, such as hypothesis testing and calculating a confidence interval, is an impor...
SpotlightInternational audienceSketching and stochastic gradient methods are arguably the most commo...
We analyze the learning properties of the stochastic gradient method when multiple passes over the d...
We analyze the learning properties of the stochastic gradient method when multiple passes over the d...
Stochastic gradient descent (SGD) and its variants have established themselves as the go-to algorith...
AbstractWe propose a stochastic gradient descent algorithm for learning the gradient of a regression...
We consider the random-design least-squares regression problem within the reproducing kernel Hilbert...
We study generalization properties of random features (RF) regression in high dimensions optimized b...
We study the generalization properties of ridge regression with random features in the statistical l...
We study generalization properties of distributed algorithms in the setting of nonparametric regress...
AbstractVarious appealing ideas have been recently proposed in the statistical literature to scale-u...
In recent studies, the generalization properties for distributed learning and random features assume...
Stochastic descent methods (of the gradient and mirror varieties) have become increasingly popular i...
We study the problem of learning-to-learn: inferring a learning algorithm that works well on tasks s...
We consider the minimization of an objective function given access to unbiased estimates of its grad...
Statistical inference, such as hypothesis testing and calculating a confidence interval, is an impor...