This papers presents an overview of gradient based methods for minimization of noisy functions. It is assumed that the objective functions is either given with error terms of stochastic nature or given as the mathematical expectation. Such problems arise in the context of simulation based optimization. The focus of this presentation is on the gradient based Stochastic Approximation and Sample Average Approximation methods. The concept of stochastic gradient approximation of the true gradient can be successfully extended to deterministic problems. Methods of this kind are presented for the data fitting and machine learning problems
This chapter deals with algorithms for the optimization of simulated systems.In particular we study ...
We consider the problem of efficiently estimating gradients from stochastic simulation. Although the...
Abstract. Stochastic-approximation gradient methods are attractive for large-scale convex optimizati...
ABSTRACT. This papers presents an overview of gradient based methods for minimization of noisy func-...
Stochastic approximation (SA) is a classical algorithm that has had since the early days a huge impa...
Stochastic approximation (SA) is a classical algorithm that has had since the early days a huge impa...
Stochastic approximation (SA) is a classical algorithm that has had since the early days a huge impa...
Stochastic approximation (SA) is a classical algorithm that has had since the early days a huge impa...
International audienceStochastic approximation (SA) is a classical algorithm that has had since the ...
Stochastic Approximation (SA) is a classical algorithm that has had since the early days a huge impa...
Stochastic Approximation (SA) is a classical algorithm that has had since the early days a huge impa...
Stochastic Approximation (SA) is a classical algorithm that has had since the early days a huge impa...
We consider the problem of efficiently estimating gradients from stochastic simulation. Although the...
In this paper we analyze different schemes for obtaining gradient estimates when the underlying func...
We develop the mathematical foundations of the stochastic modified equations (SME) framework for ana...
This chapter deals with algorithms for the optimization of simulated systems.In particular we study ...
We consider the problem of efficiently estimating gradients from stochastic simulation. Although the...
Abstract. Stochastic-approximation gradient methods are attractive for large-scale convex optimizati...
ABSTRACT. This papers presents an overview of gradient based methods for minimization of noisy func-...
Stochastic approximation (SA) is a classical algorithm that has had since the early days a huge impa...
Stochastic approximation (SA) is a classical algorithm that has had since the early days a huge impa...
Stochastic approximation (SA) is a classical algorithm that has had since the early days a huge impa...
Stochastic approximation (SA) is a classical algorithm that has had since the early days a huge impa...
International audienceStochastic approximation (SA) is a classical algorithm that has had since the ...
Stochastic Approximation (SA) is a classical algorithm that has had since the early days a huge impa...
Stochastic Approximation (SA) is a classical algorithm that has had since the early days a huge impa...
Stochastic Approximation (SA) is a classical algorithm that has had since the early days a huge impa...
We consider the problem of efficiently estimating gradients from stochastic simulation. Although the...
In this paper we analyze different schemes for obtaining gradient estimates when the underlying func...
We develop the mathematical foundations of the stochastic modified equations (SME) framework for ana...
This chapter deals with algorithms for the optimization of simulated systems.In particular we study ...
We consider the problem of efficiently estimating gradients from stochastic simulation. Although the...
Abstract. Stochastic-approximation gradient methods are attractive for large-scale convex optimizati...