With the purpose of examining biased updates in variance-reduced stochastic gradient methods, we introduce SVAG, a SAG/SAGA-like method with adjustable bias. SVAG is analyzed in a cocoercive root-finding setting, a setting which yields the same results as in the usual smooth convex optimization setting for the ordinary proximal-gradient method. We show that the same is not true for SVAG when biased updates are used. The step-size requirements for when the operators are gradients are significantly less restrictive compared to when they are not. This highlights the need to not rely solely on cocoercivity when analyzing variance-reduced methods meant for optimization. Our analysis either match or improve on previously known convergence conditi...
Variance reduction is a crucial tool for improving the slow convergence of stochastic gradient desce...
A number of optimization approaches have been proposed for optimizing nonconvex objectives (e.g. dee...
Funder: Gates Cambridge Trust (GB)AbstractVariance reduction is a crucial tool for improving the slo...
With the purpose of examining biased updates in variance-reduced stochastic gradient methods, we int...
Stochastic gradient descent is popular for large scale optimization but has slow convergence asympto...
The field of statistical machine learning has seen a rapid progress in complex hierarchical Bayesian...
This paper provides a framework to analyze stochastic gradient algorithms in a mean squared error (M...
Stochastic approximation is one of the effective approach to deal with the large-scale machine learn...
Stochastic gradient descent is popular for large scale optimization but has slow convergence asympto...
International audienceAmongst the very first variance reduced stochastic methods for solving the emp...
17 pages, 2 figures, 1 tableInternational audienceOur goal is to improve variance reducing stochasti...
This work considers optimization methods for large-scale machine learning (ML). Optimization in ML ...
237 pagesIt seems that in the current age, computers, computation, and data have an increasingly imp...
<p>Stochastic gradient optimization is a class of widely used algorithms for training machine learni...
Stochastic gradient optimization is a class of widely used algorithms for training machine learning ...
Variance reduction is a crucial tool for improving the slow convergence of stochastic gradient desce...
A number of optimization approaches have been proposed for optimizing nonconvex objectives (e.g. dee...
Funder: Gates Cambridge Trust (GB)AbstractVariance reduction is a crucial tool for improving the slo...
With the purpose of examining biased updates in variance-reduced stochastic gradient methods, we int...
Stochastic gradient descent is popular for large scale optimization but has slow convergence asympto...
The field of statistical machine learning has seen a rapid progress in complex hierarchical Bayesian...
This paper provides a framework to analyze stochastic gradient algorithms in a mean squared error (M...
Stochastic approximation is one of the effective approach to deal with the large-scale machine learn...
Stochastic gradient descent is popular for large scale optimization but has slow convergence asympto...
International audienceAmongst the very first variance reduced stochastic methods for solving the emp...
17 pages, 2 figures, 1 tableInternational audienceOur goal is to improve variance reducing stochasti...
This work considers optimization methods for large-scale machine learning (ML). Optimization in ML ...
237 pagesIt seems that in the current age, computers, computation, and data have an increasingly imp...
<p>Stochastic gradient optimization is a class of widely used algorithms for training machine learni...
Stochastic gradient optimization is a class of widely used algorithms for training machine learning ...
Variance reduction is a crucial tool for improving the slow convergence of stochastic gradient desce...
A number of optimization approaches have been proposed for optimizing nonconvex objectives (e.g. dee...
Funder: Gates Cambridge Trust (GB)AbstractVariance reduction is a crucial tool for improving the slo...