Saddle-point problems have recently gained an increased attention from the machine learning community, mainly due to applications in training Generative Adversarial Networks using stochastic gradients. At the same time, in some applications only a zeroth-order oracle is available. In this paper, we propose several algorithms to solve stochastic smooth (strongly) convex-concave saddle- point problems using zeroth-order oracles, and estimate their convergence rate and its dependence on the dimension n of the variable. In particular, our analysis shows that in the case when the feasible set is a direct product of two simplices, our convergence rate for the stochastic term is only by a log n factor worse than for the first-order methods. We als...
In this paper, we consider stochastic weakly convex optimization problems, however without the exist...
In this paper, we propose a new zero order optimization method called minibatch stochastic three poi...
Saddle-point problems appear in various settings including machine learning, zero-sum stochastic gam...
Saddle-point problems have recently gained an increased attention from the machine learning communit...
In this paper, we analyze gradient-free methods with one-point feedback for stochastic saddle point ...
We consider non-smooth saddle point optimization problems. To solve these problems, we propose a zer...
Gradient-free/zeroth-order methods for black-box convex optimization have been extensively studied i...
We consider composite minimax optimization problems where the goal is to find a saddle-point of a la...
Introduction of optimisation problems in which the objective function is black box or obtaining the ...
International audienceWe consider convex-concave saddle-point problems where the objective functions...
In this paper, we analyze different first-order methods of smooth convex optimization employing inex...
This work studies minimization problems with zero-order noisy oracle information under the assumptio...
Functionally constrained stochastic optimization problems, where neither the objective function nor ...
Large-scale saddle-point problems arise in such machine learning tasks as GANs and linear models wit...
We consider a step search method for continuous optimization under a stochastic setting where the fu...
In this paper, we consider stochastic weakly convex optimization problems, however without the exist...
In this paper, we propose a new zero order optimization method called minibatch stochastic three poi...
Saddle-point problems appear in various settings including machine learning, zero-sum stochastic gam...
Saddle-point problems have recently gained an increased attention from the machine learning communit...
In this paper, we analyze gradient-free methods with one-point feedback for stochastic saddle point ...
We consider non-smooth saddle point optimization problems. To solve these problems, we propose a zer...
Gradient-free/zeroth-order methods for black-box convex optimization have been extensively studied i...
We consider composite minimax optimization problems where the goal is to find a saddle-point of a la...
Introduction of optimisation problems in which the objective function is black box or obtaining the ...
International audienceWe consider convex-concave saddle-point problems where the objective functions...
In this paper, we analyze different first-order methods of smooth convex optimization employing inex...
This work studies minimization problems with zero-order noisy oracle information under the assumptio...
Functionally constrained stochastic optimization problems, where neither the objective function nor ...
Large-scale saddle-point problems arise in such machine learning tasks as GANs and linear models wit...
We consider a step search method for continuous optimization under a stochastic setting where the fu...
In this paper, we consider stochastic weakly convex optimization problems, however without the exist...
In this paper, we propose a new zero order optimization method called minibatch stochastic three poi...
Saddle-point problems appear in various settings including machine learning, zero-sum stochastic gam...