In this paper, we study simulation-based optimization algorithms for solving discrete time optimal stopping problems. Using large deviation theory for the increments of empirical processes, we derive optimal convergence rates for the value function estimate and show that they cannot be improved in general. The rates derived provide a guide to the choice of the number of simulated paths needed in optimization step, which is crucial for the good performance of any simulation-based optimization algorithm. Finally, we present a numerical example of solving optimal stopping problem arising in finance that illustrates our theoretical findings
Abstract We consider an optimal stopping problem with a discrete time stochastic process where a cri...
The optimal stopping problem arising in the pricing of American options can be tackled by the so cal...
AbstractWe consider large classes of continuous time optimal stopping problems for which we establis...
In this paper we study simulation based optimization algorithms for solving discrete time optimal st...
In this paper we study simulation-based optimization algorithms for solving discrete time optimal st...
In this thesis we treat the problem of discrete time optimal stopping in a high-dimensional setting....
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...
In this paper we develop a deep learning method for optimal stopping problems which directly learns ...
In this project, we present a methodology to transform Optimal Stopping Problems into Free Boundary ...
We consider large classes of continuous time optimal stopping problems for which we establish the ex...
This thesis deals with the explicit solution of optimal stopping problems with infinite time horizon...
Optimal stopping problems form a class of stochastic optimization problems that has a wide range of ...
We consider large classes of continuous time optimal stopping problems for which we establish the ex...
We study numerical approximations for the payoff function of the stochastic optimal stopping and con...
Abstract We consider an optimal stopping problem with a discrete time stochastic process where a cri...
The optimal stopping problem arising in the pricing of American options can be tackled by the so cal...
AbstractWe consider large classes of continuous time optimal stopping problems for which we establis...
In this paper we study simulation based optimization algorithms for solving discrete time optimal st...
In this paper we study simulation-based optimization algorithms for solving discrete time optimal st...
In this thesis we treat the problem of discrete time optimal stopping in a high-dimensional setting....
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...
In this paper we develop a deep learning method for optimal stopping problems which directly learns ...
In this project, we present a methodology to transform Optimal Stopping Problems into Free Boundary ...
We consider large classes of continuous time optimal stopping problems for which we establish the ex...
This thesis deals with the explicit solution of optimal stopping problems with infinite time horizon...
Optimal stopping problems form a class of stochastic optimization problems that has a wide range of ...
We consider large classes of continuous time optimal stopping problems for which we establish the ex...
We study numerical approximations for the payoff function of the stochastic optimal stopping and con...
Abstract We consider an optimal stopping problem with a discrete time stochastic process where a cri...
The optimal stopping problem arising in the pricing of American options can be tackled by the so cal...
AbstractWe consider large classes of continuous time optimal stopping problems for which we establis...