We study the complexity of producing $(\delta,\epsilon)$-stationary points of Lipschitz objectives which are possibly neither smooth nor convex, using only noisy function evaluations. Recent works proposed several stochastic zero-order algorithms that solve this task, all of which suffer from a dimension-dependence of $\Omega(d^{3/2})$ where $d$ is the dimension of the problem, which was conjectured to be optimal. We refute this conjecture by providing a faster algorithm that has complexity $O(d\delta^{-1}\epsilon^{-3})$, which is optimal (up to numerical constants) with respect to $d$ and also optimal with respect to the accuracy parameters $\delta,\epsilon$, thus solving an open question due to Lin et al. (NeurIPS'22). Moreover, the conve...
The problem of stochastic convex optimization with bandit feedback (in the learning com-munity) or w...
An adaptive regularization algorithm using inexact function and derivatives evaluations is proposed ...
31 pages, 4 figures, 1 tableInternational audienceUniversal methods for optimization are designed to...
We study the complexity of producing $(\delta,\epsilon)$-stationary points of Lipschitz objectives w...
In this paper, we present several new results on minimizing a nonsmooth and nonconvex function under...
We study the impact of nonconvexity on the complexity of nonsmooth optimization, emphasizing objecti...
We study the complexity of finding the global solution to stochastic nonconvex optimization when the...
Zeroth-order optimization is a fundamental research topic that has been a focus of various learning ...
In this paper, we propose and analyse a family of generalised stochastic composite mirror descent al...
Functionally constrained stochastic optimization problems, where neither the objective function nor ...
In this paper, we propose a new zero order optimization method called minibatch stochastic three poi...
We consider the stochastic optimization problem with smooth but not necessarily convex objectives in...
In this paper, we provide near-optimal accelerated first-order methods for minimizing a broad class ...
The total complexity (measured as the total number of gradient computations) of a stochastic first-o...
We study the problem of finding a near-stationary point for smooth minimax optimization. The recent ...
The problem of stochastic convex optimization with bandit feedback (in the learning com-munity) or w...
An adaptive regularization algorithm using inexact function and derivatives evaluations is proposed ...
31 pages, 4 figures, 1 tableInternational audienceUniversal methods for optimization are designed to...
We study the complexity of producing $(\delta,\epsilon)$-stationary points of Lipschitz objectives w...
In this paper, we present several new results on minimizing a nonsmooth and nonconvex function under...
We study the impact of nonconvexity on the complexity of nonsmooth optimization, emphasizing objecti...
We study the complexity of finding the global solution to stochastic nonconvex optimization when the...
Zeroth-order optimization is a fundamental research topic that has been a focus of various learning ...
In this paper, we propose and analyse a family of generalised stochastic composite mirror descent al...
Functionally constrained stochastic optimization problems, where neither the objective function nor ...
In this paper, we propose a new zero order optimization method called minibatch stochastic three poi...
We consider the stochastic optimization problem with smooth but not necessarily convex objectives in...
In this paper, we provide near-optimal accelerated first-order methods for minimizing a broad class ...
The total complexity (measured as the total number of gradient computations) of a stochastic first-o...
We study the problem of finding a near-stationary point for smooth minimax optimization. The recent ...
The problem of stochastic convex optimization with bandit feedback (in the learning com-munity) or w...
An adaptive regularization algorithm using inexact function and derivatives evaluations is proposed ...
31 pages, 4 figures, 1 tableInternational audienceUniversal methods for optimization are designed to...