We consider maximising a concave function over a convex set by a simple randomised algorithm. The strength of the algorithm is that it requires only approximate function evaluations for the concave function and a weak membership oracle for the convex set. Under smoothness conditions on the function and the feasible set, we show that our algorithm computes a near-optimal point in a number of operations which is bounded by a polynomial function of all relevant input parameters and the reciprocal of the desired precision, with high probability. As an application to which the features of our algorithm are particularly useful we study two-stage stochastic programming problems. These problems have the property that evaluation of the objective fun...
We consider convex optimization problems with structures that are suitable for sequential treatment ...
With the advent of massive datasets, statistical learning and information processing techniques are ...
In this paper we develop probabilistic arguments for justifying the quality of an approximate soluti...
We consider maximising a concave function over a convex set by a simple randomised algorithm. The st...
A simple randomised algorithm for convex optimisation Application to two-stage stochastic programmin
We propose a randomized gradient method for the handling of a convex function whose gradient computa...
International audienceWe discuss the possibility to accelerate solving extremely large-scale well st...
Many optimization problems are naturally delivered in an uncertain framework, and one would like to ...
Random convex programs (RCPs) are convex optimization problems subject to a finite number of constra...
In this paper, we prove new complexity bounds for methods of convex optimization based only on compu...
We consider the problem of optimizing an approximately convex function over a bounded convex set in ...
We consider distributionally robust two-stage stochastic convex programming problems, in which the r...
Abstract. We propose a randomized method for general convex optimization problems; namely, the minim...
This dissertation applies convex optimization techniques to a class of stochastic optimization probl...
Abstract Stochastic gradient descent algorithm is a classical and useful method for stochastic optim...
We consider convex optimization problems with structures that are suitable for sequential treatment ...
With the advent of massive datasets, statistical learning and information processing techniques are ...
In this paper we develop probabilistic arguments for justifying the quality of an approximate soluti...
We consider maximising a concave function over a convex set by a simple randomised algorithm. The st...
A simple randomised algorithm for convex optimisation Application to two-stage stochastic programmin
We propose a randomized gradient method for the handling of a convex function whose gradient computa...
International audienceWe discuss the possibility to accelerate solving extremely large-scale well st...
Many optimization problems are naturally delivered in an uncertain framework, and one would like to ...
Random convex programs (RCPs) are convex optimization problems subject to a finite number of constra...
In this paper, we prove new complexity bounds for methods of convex optimization based only on compu...
We consider the problem of optimizing an approximately convex function over a bounded convex set in ...
We consider distributionally robust two-stage stochastic convex programming problems, in which the r...
Abstract. We propose a randomized method for general convex optimization problems; namely, the minim...
This dissertation applies convex optimization techniques to a class of stochastic optimization probl...
Abstract Stochastic gradient descent algorithm is a classical and useful method for stochastic optim...
We consider convex optimization problems with structures that are suitable for sequential treatment ...
With the advent of massive datasets, statistical learning and information processing techniques are ...
In this paper we develop probabilistic arguments for justifying the quality of an approximate soluti...