This paper shows that error bounds can be used as effective tools for deriving complexity results for first-order descent methods in convex minimization. In a first stage, this objective led us to revisit the interplay between error bounds and the Kurdyka-Lojasiewicz (KL) inequality. One can show the equivalence between the two concepts for convex functions having a moderately flat profile near the set of minimizers (as those of functions with Hölderian growth). A counterexample shows that the equivalence is no longer true for extremely flat functions. This fact reveals the relevance of an approach based on KL inequality. In a second stage, we show how KL inequalities can in turn be employed to compute new complexity bounds for a wealth of ...
In this paper, we study the Kurdyka–Łojasiewicz (KL) exponent, an important quantity for analyzing t...
Code available at https://github.com/AdrienTaylor/GreedyMethodsInternational audienceWe describe a n...
We propose first-order methods based on a level-set technique for convex constrained optimization th...
This paper shows that error bounds can be used as effective tools for deriving complexity results fo...
Cette thèse traite des méthodes de descente d’ordre un pour les problèmes de minimisation. Elle comp...
The study of first-order optimization is sensitive to the assumptions made on the objective function...
In this note we present tight lower bounds on the information-based complexity of large-scale smooth...
This is a short tutorial on complexity studies for differentiable convex optimization. A complexity ...
We consider the extragradient method to minimize the sum of two functions, the first one being smoot...
Motivated by recent work of Renegar, we present new computational methods and associated computation...
This thesis is focused on the limits of performance of large-scale convex optimization algorithms. C...
Optimization is an important discipline of applied mathematics with far-reaching applications. Optim...
Convex optimization, the study of minimizing convex functions over convex sets, is host to a multit...
This note discusses proofs for convergence of first-order methods based on simple potential-function...
This thesis focuses on three themes related to the mathematical theory of first-order methods for co...
In this paper, we study the Kurdyka–Łojasiewicz (KL) exponent, an important quantity for analyzing t...
Code available at https://github.com/AdrienTaylor/GreedyMethodsInternational audienceWe describe a n...
We propose first-order methods based on a level-set technique for convex constrained optimization th...
This paper shows that error bounds can be used as effective tools for deriving complexity results fo...
Cette thèse traite des méthodes de descente d’ordre un pour les problèmes de minimisation. Elle comp...
The study of first-order optimization is sensitive to the assumptions made on the objective function...
In this note we present tight lower bounds on the information-based complexity of large-scale smooth...
This is a short tutorial on complexity studies for differentiable convex optimization. A complexity ...
We consider the extragradient method to minimize the sum of two functions, the first one being smoot...
Motivated by recent work of Renegar, we present new computational methods and associated computation...
This thesis is focused on the limits of performance of large-scale convex optimization algorithms. C...
Optimization is an important discipline of applied mathematics with far-reaching applications. Optim...
Convex optimization, the study of minimizing convex functions over convex sets, is host to a multit...
This note discusses proofs for convergence of first-order methods based on simple potential-function...
This thesis focuses on three themes related to the mathematical theory of first-order methods for co...
In this paper, we study the Kurdyka–Łojasiewicz (KL) exponent, an important quantity for analyzing t...
Code available at https://github.com/AdrienTaylor/GreedyMethodsInternational audienceWe describe a n...
We propose first-order methods based on a level-set technique for convex constrained optimization th...