main paper (9 pages) + appendix (21 pages)International audienceWe introduce a generic scheme for accelerating first-order optimization methods in the sense of Nesterov, which builds upon a new analysis of theaccelerated proximal point algorithm. Our approach consists of minimizing a convex objective by approximately solving a sequence of well-chosen auxiliary problems, leading to faster convergence. This strategy applies to a large class of algorithms, including gradient descent, block coordinate descent, SAG, SAGA, SDCA, SVRG, Finito/MISO, and their proximal variants. For all of these methods, we provide acceleration and explicit support for non-strongly convex objectives. In addition to theoretical speed-up, we also show that accelerati...
The dissertation addresses the research topics of machine learning outlined below. We developed the ...
We provide a novel accelerated first-order method that achieves the asymptotically optimal convergen...
This thesis focuses on developing and analyzing accelerated and inexact first-order methods for solv...
main paper (9 pages) + appendix (21 pages)International audienceWe introduce a generic scheme for ac...
http://jmlr.org/papers/volume18/17-748/17-748.pdfInternational audienceWe introduce a generic scheme...
We introduce a generic scheme to solve nonconvex optimization problems using gradient-based algorith...
International audienceIn this paper, we introduce various mechanisms to obtain accelerated first-ord...
Optimization is an important discipline of applied mathematics with far-reaching applications. Optim...
International audienceWe introduce a generic scheme to solve non-convex optimization problems using ...
Acceleration in optimization is a term that is generally applied to optimization algorithms presenti...
First-order methods play a central role in large-scale convex optimization. Despite their various fo...
International audienceWe describe a convergence acceleration technique for generic optimization prob...
We provide a novel accelerated first-order method that achieves the asymptotically optimal convergen...
Les problèmes d’optimisation apparaissent naturellement pendant l’entraine-ment de modèles d’apprent...
International audienceWe propose an inexact variable-metric proximal point algorithm to accelerate g...
The dissertation addresses the research topics of machine learning outlined below. We developed the ...
We provide a novel accelerated first-order method that achieves the asymptotically optimal convergen...
This thesis focuses on developing and analyzing accelerated and inexact first-order methods for solv...
main paper (9 pages) + appendix (21 pages)International audienceWe introduce a generic scheme for ac...
http://jmlr.org/papers/volume18/17-748/17-748.pdfInternational audienceWe introduce a generic scheme...
We introduce a generic scheme to solve nonconvex optimization problems using gradient-based algorith...
International audienceIn this paper, we introduce various mechanisms to obtain accelerated first-ord...
Optimization is an important discipline of applied mathematics with far-reaching applications. Optim...
International audienceWe introduce a generic scheme to solve non-convex optimization problems using ...
Acceleration in optimization is a term that is generally applied to optimization algorithms presenti...
First-order methods play a central role in large-scale convex optimization. Despite their various fo...
International audienceWe describe a convergence acceleration technique for generic optimization prob...
We provide a novel accelerated first-order method that achieves the asymptotically optimal convergen...
Les problèmes d’optimisation apparaissent naturellement pendant l’entraine-ment de modèles d’apprent...
International audienceWe propose an inexact variable-metric proximal point algorithm to accelerate g...
The dissertation addresses the research topics of machine learning outlined below. We developed the ...
We provide a novel accelerated first-order method that achieves the asymptotically optimal convergen...
This thesis focuses on developing and analyzing accelerated and inexact first-order methods for solv...