We analyze worst-case convergence guarantees of first-order optimization methods over a function class extending that of smooth and convex functions. This class contains convex functions that admit a simple quadratic upper bound. Its study is motivated by its stability under minor perturbations. We provide a thorough analysis of first-order methods, including worst-case convergence guarantees for several algorithms, and demonstrate that some of them achieve the optimal worst-case guarantee over the class. We support our analysis by numerical validation of worst-case guarantees using performance estimation problems. A few observations can be drawn from this analysis, particularly regarding the optimality (resp. and adaptivity) of the heavy-b...
In this paper, we study the behavior of solutions of the ODE associated to the Heavy Ball method. Si...
In this paper, we study the behavior of solutions of the ODE associated to the Heavy Ball method. Si...
This is a short tutorial on complexity studies for differentiable convex optimization. A complexity ...
We analyze worst-case convergence guarantees of first-order optimization methods over a function cla...
We analyze worst-case convergence guarantees of first-order optimization methods over a function cla...
We analyze worst-case convergence guarantees of first-order optimization methods over a function cla...
We analyze worst-case convergence guarantees of first-order optimization methods over a function cla...
We show that the exact worst-case performance of fixed-step first-order methods for smooth (possibly...
We are interested in determining the worst performance exhibited by a given first-order optimization...
Code available at https://github.com/AdrienTaylor/GreedyMethodsInternational audienceWe describe a n...
Motivated by recent work of Renegar, we present new computational methods and associated computation...
The standard assumption for proving linear convergence of first order methods for smooth convex opti...
We consider the gradient (or steepest) descent method with exact line search applied to a strongly c...
We consider the gradient (or steepest) descent method with exact line search applied to a strongly c...
We consider the gradient (or steepest) descent method with exact line search applied to a strongly c...
In this paper, we study the behavior of solutions of the ODE associated to the Heavy Ball method. Si...
In this paper, we study the behavior of solutions of the ODE associated to the Heavy Ball method. Si...
This is a short tutorial on complexity studies for differentiable convex optimization. A complexity ...
We analyze worst-case convergence guarantees of first-order optimization methods over a function cla...
We analyze worst-case convergence guarantees of first-order optimization methods over a function cla...
We analyze worst-case convergence guarantees of first-order optimization methods over a function cla...
We analyze worst-case convergence guarantees of first-order optimization methods over a function cla...
We show that the exact worst-case performance of fixed-step first-order methods for smooth (possibly...
We are interested in determining the worst performance exhibited by a given first-order optimization...
Code available at https://github.com/AdrienTaylor/GreedyMethodsInternational audienceWe describe a n...
Motivated by recent work of Renegar, we present new computational methods and associated computation...
The standard assumption for proving linear convergence of first order methods for smooth convex opti...
We consider the gradient (or steepest) descent method with exact line search applied to a strongly c...
We consider the gradient (or steepest) descent method with exact line search applied to a strongly c...
We consider the gradient (or steepest) descent method with exact line search applied to a strongly c...
In this paper, we study the behavior of solutions of the ODE associated to the Heavy Ball method. Si...
In this paper, we study the behavior of solutions of the ODE associated to the Heavy Ball method. Si...
This is a short tutorial on complexity studies for differentiable convex optimization. A complexity ...