In this paper we develop several regression algorithms for solving general stochastic optimal control problems via Monte Carlo. This type of algorithms is particulary useful for problems with a high-dimensional state space and complex dependence structure of the underlying Markov process with respect to some control. The main idea behind the algorithms is to simulate a set of trajectories under some reference measure and to use the Bellman principle combined with fast methods for approximating conditional expectations and functional optimization. Theoretical properties of the presented algorithms are investigated and the convergence to the optimal solution is proved under mild assumptions. Finally, we present numerical results for the probl...
We consider the solution of stochastic dynamic programs using sample path estimates. Applying the th...
We study numerical approximations for the payoff function of the stochastic optimal stopping and con...
Stochastic approximation is one of the oldest approaches for solving stochastic optimization problem...
In this paper we develop several regression algorithms for solving general stochastic optimal contro...
In this paper we develop several regression algorithms for solving general stochastic optimal contro...
In this paper we develop several regression algorithms for solving general stochastic optimal contro...
Least squares Monte Carlo methods are a popular numerical approximation method for solving stochasti...
In the financial engineering field, many problems can be formulated as stochastic control problems. ...
Includes bibliographical references (p. 29-30).Supported by NSF grant. DMI-9625489 Supported by ARO ...
In this paper we study randomized optimal stopping problems and consider corresponding forward and b...
The theme of this thesis is to develop theoretically sound as well as numerically efficient Least Sq...
This thesis deals with the numerical solution of general stochastic control problems, with notable a...
This paper is a survey on some recent aspects and developments in stochastic control. We discuss the...
The following thesis is divided in two main topics. The first part studies variations of optimal pre...
Abstract This paper approaches optimal control problems for discrete-time controlled Markov processe...
We consider the solution of stochastic dynamic programs using sample path estimates. Applying the th...
We study numerical approximations for the payoff function of the stochastic optimal stopping and con...
Stochastic approximation is one of the oldest approaches for solving stochastic optimization problem...
In this paper we develop several regression algorithms for solving general stochastic optimal contro...
In this paper we develop several regression algorithms for solving general stochastic optimal contro...
In this paper we develop several regression algorithms for solving general stochastic optimal contro...
Least squares Monte Carlo methods are a popular numerical approximation method for solving stochasti...
In the financial engineering field, many problems can be formulated as stochastic control problems. ...
Includes bibliographical references (p. 29-30).Supported by NSF grant. DMI-9625489 Supported by ARO ...
In this paper we study randomized optimal stopping problems and consider corresponding forward and b...
The theme of this thesis is to develop theoretically sound as well as numerically efficient Least Sq...
This thesis deals with the numerical solution of general stochastic control problems, with notable a...
This paper is a survey on some recent aspects and developments in stochastic control. We discuss the...
The following thesis is divided in two main topics. The first part studies variations of optimal pre...
Abstract This paper approaches optimal control problems for discrete-time controlled Markov processe...
We consider the solution of stochastic dynamic programs using sample path estimates. Applying the th...
We study numerical approximations for the payoff function of the stochastic optimal stopping and con...
Stochastic approximation is one of the oldest approaches for solving stochastic optimization problem...