In this dissertation, we propose two new types of stochastic approximation (SA) methods and study the sensitivity of SA and of a stochastic gradient method to various input parameters. First, we summarize the most common stochastic gradient estimation techniques, both direct and indirect, as well as the two classical SA algorithms, Robbins-Monro (RM) and Kiefer-Wolfowitz (KW), followed by some well-known modifications to the step size, output, gradient, and projection operator. Second, we introduce two new stochastic gradient methods in SA for univariate and multivariate stochastic optimization problems. Under a setting where both direct and indirect gradients are available, our new SA algorithms estimate the gradient using a hybrid estima...
Abstract. Stochastic-approximation gradient methods are attractive for large-scale convex optimizati...
http://www.optimization-online.org/DB_HTML/2007/09/1787.htmlIn this paper we consider optimization p...
The practical aspect of the stochastic approximation method (SA) is studied. Specifically, we inves...
We consider the problem of efficiently estimating gradients from stochastic simulation. Although the...
We consider the problem of efficiently estimating gradients from stochastic simulation. Although the...
Stochastic approximation is one of the oldest approaches for solving stochastic optimization problem...
We investigate the mean-squared error (MSE) performance of the Kiefer-Wolfowitz (KW) stochastic appr...
Traditionally, stochastic approximation (SA) schemes have been popular choices for solving stochasti...
We present new algorithms for simulation optimization using random directions stochastic approximati...
We consider the Kiefer-Wolfowitz (KW) stochastic approximation algorithm and derive gen-eral upper b...
International audienceIn this paper we consider optimization problems where the objective function i...
Stochastic approximation (SA) is a classical algorithm that has had since the early days a huge impa...
abstract (abridged): many of the present problems in automatic control economic systems and living o...
Stochastic approximation algorithms are iterative procedures which are used to approximate a target ...
This papers presents an overview of gradient based methods for minimization of noisy functions. It i...
Abstract. Stochastic-approximation gradient methods are attractive for large-scale convex optimizati...
http://www.optimization-online.org/DB_HTML/2007/09/1787.htmlIn this paper we consider optimization p...
The practical aspect of the stochastic approximation method (SA) is studied. Specifically, we inves...
We consider the problem of efficiently estimating gradients from stochastic simulation. Although the...
We consider the problem of efficiently estimating gradients from stochastic simulation. Although the...
Stochastic approximation is one of the oldest approaches for solving stochastic optimization problem...
We investigate the mean-squared error (MSE) performance of the Kiefer-Wolfowitz (KW) stochastic appr...
Traditionally, stochastic approximation (SA) schemes have been popular choices for solving stochasti...
We present new algorithms for simulation optimization using random directions stochastic approximati...
We consider the Kiefer-Wolfowitz (KW) stochastic approximation algorithm and derive gen-eral upper b...
International audienceIn this paper we consider optimization problems where the objective function i...
Stochastic approximation (SA) is a classical algorithm that has had since the early days a huge impa...
abstract (abridged): many of the present problems in automatic control economic systems and living o...
Stochastic approximation algorithms are iterative procedures which are used to approximate a target ...
This papers presents an overview of gradient based methods for minimization of noisy functions. It i...
Abstract. Stochastic-approximation gradient methods are attractive for large-scale convex optimizati...
http://www.optimization-online.org/DB_HTML/2007/09/1787.htmlIn this paper we consider optimization p...
The practical aspect of the stochastic approximation method (SA) is studied. Specifically, we inves...