One of the most attractive recent approaches to processing well-structured large-scale convex optimization problems isbased on smooth convex-concave saddle point reformulation of the problem of interest and solving the resulting problem by a fast first order saddle point method utilizing smoothness of the saddle point cost function. In this paper, we demonstrate that when the saddle point cost function is polynomial, the precise gradients of the cost function required by deterministic first order saddle point algorithms and becoming prohibitively computationally expensive in the extremely large-scale case, can be replaced with incomparably cheaper computationally unbiased random estimates of the gradients. We show that for large-scale probl...
Code available at https://github.com/AdrienTaylor/GreedyMethodsInternational audienceWe describe a n...
This thesis is focused on the limits of performance of large-scale convex optimization algorithms. C...
With the advent of massive datasets, statistical learning and information processing techniques are ...
International audienceWe present several state-of-the-art First Order methods for "well-structured" ...
International audienceWe discuss the possibility to accelerate solving extremely large-scale well st...
This article proposes large-scale convex optimization problems to be solved via saddle points of the...
Thesis: Ph. D. in Mathematics and Operations Research, Massachusetts Institute of Technology, Depart...
Saddle-point problems have recently gained an increased attention from the machine learning communit...
International audienceIn this paper we propose randomized first-order algorithms for solving bilinea...
International audienceWe discuss several state-of-the-art computationally cheap, as opposed to the p...
In this paper, we analyze different first-order methods of smooth convex optimization employing inex...
International audienceIn this talk, we propose randomized first-order algorithms for solving bilinea...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Mathematics, 2016.This electron...
In this paper, we prove new complexity bounds for methods of convex optimization based only on compu...
We consider composite minimax optimization problems where the goal is to find a saddle-point of a la...
Code available at https://github.com/AdrienTaylor/GreedyMethodsInternational audienceWe describe a n...
This thesis is focused on the limits of performance of large-scale convex optimization algorithms. C...
With the advent of massive datasets, statistical learning and information processing techniques are ...
International audienceWe present several state-of-the-art First Order methods for "well-structured" ...
International audienceWe discuss the possibility to accelerate solving extremely large-scale well st...
This article proposes large-scale convex optimization problems to be solved via saddle points of the...
Thesis: Ph. D. in Mathematics and Operations Research, Massachusetts Institute of Technology, Depart...
Saddle-point problems have recently gained an increased attention from the machine learning communit...
International audienceIn this paper we propose randomized first-order algorithms for solving bilinea...
International audienceWe discuss several state-of-the-art computationally cheap, as opposed to the p...
In this paper, we analyze different first-order methods of smooth convex optimization employing inex...
International audienceIn this talk, we propose randomized first-order algorithms for solving bilinea...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Mathematics, 2016.This electron...
In this paper, we prove new complexity bounds for methods of convex optimization based only on compu...
We consider composite minimax optimization problems where the goal is to find a saddle-point of a la...
Code available at https://github.com/AdrienTaylor/GreedyMethodsInternational audienceWe describe a n...
This thesis is focused on the limits of performance of large-scale convex optimization algorithms. C...
With the advent of massive datasets, statistical learning and information processing techniques are ...