Least squares Monte Carlo methods are a popular numerical approximation method for solving stochastic control problems. Based on dynamic programming, their key feature is the approximation of the conditional expectation of future rewards by linear least squares regression. Hence, the choice of basis functions is crucial for the accuracy of the method. Earlier work by some of us [Belomestny, Schoenmakers, Spokoiny, Zharkynbay, Commun. Math. Sci., 18(1):109?121, 2020] proposes to reinforce the basis functions in the case of optimal stopping problems by already computed value functions for later times, thereby considerably improving the accuracy with limited additional computational cost. We extend the reinforced regression method to a general...
pre-printWe discuss the use of stochastic collocation for the solution of optimal control problems w...
Abstract. Methods for solving stochastic optimization problems by Monte-Carlo simulation are conside...
International audienceFinding optimal controllers of stochastic systems is a particularly challengin...
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. ...
The theme of this thesis is to develop theoretically sound as well as numerically efficient Least Sq...
We introduce new variants of classical regression-based algorithms for optimal stopping problems bas...
In this article we study the connection of stochastic optimal control and reinforcement learning. Ou...
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...
In this note we propose a new approach towards solving numerically optimal stopping problems via boo...
While stochastic optimal control, together with associate formulations like Reinforcement Learning,...
We present a numerical method for finite-horizon stochastic optimal control models. We derive a stoc...
Abstract This paper approaches optimal control problems for discrete-time controlled Markov processe...
pre-printWe discuss the use of stochastic collocation for the solution of optimal control problems w...
Abstract. Methods for solving stochastic optimization problems by Monte-Carlo simulation are conside...
International audienceFinding optimal controllers of stochastic systems is a particularly challengin...
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. ...
The theme of this thesis is to develop theoretically sound as well as numerically efficient Least Sq...
We introduce new variants of classical regression-based algorithms for optimal stopping problems bas...
In this article we study the connection of stochastic optimal control and reinforcement learning. Ou...
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...
In this note we propose a new approach towards solving numerically optimal stopping problems via boo...
While stochastic optimal control, together with associate formulations like Reinforcement Learning,...
We present a numerical method for finite-horizon stochastic optimal control models. We derive a stoc...
Abstract This paper approaches optimal control problems for discrete-time controlled Markov processe...
pre-printWe discuss the use of stochastic collocation for the solution of optimal control problems w...
Abstract. Methods for solving stochastic optimization problems by Monte-Carlo simulation are conside...
International audienceFinding optimal controllers of stochastic systems is a particularly challengin...