We study a maturity randomization technique for approximating optimal control problems. The algorithm is based on a sequence of control problems with random terminal horizon which converges to the original one. This is a generalization of the so-called Canadization procedure suggested by P. Carr in [2] for the fast computation of American put option prices. In addition to the original application of this technique to optimal stopping problems, we provide an application to another problem in finance, namely the super-replication problem under stochastic volatility, and we show that the approximating value functions can be computed explicitly. Key words: optimal stopping, stochastic control, uncertain volatility models.
The classical optimal control problems for discrete-time, transient Markov processes are infinite ho...
The central theme of this thesis is the behavior of the value function of general optimal stopping p...
We study numerical approximations for the payoff function of the stochastic optimal stopping and con...
We study a maturity randomization technique for approximating optimal control problems. The algorith...
American options are actively traded worldwide on exchanges, thus making their accurate and efficien...
Stochastic programming is a mathematical optimization model for decision making when the uncertainty...
American options are actively traded worldwide on exchanges, thus making their accurate and efficien...
The following thesis is divided in two main topics. The first part studies variations of optimal pre...
We consider a linear system affected by an additive stochastic disturbance and address the design of...
The dissertation studies a discretionary stopping problem in stochastic impulse control with a quant...
In this paper we discuss the superreplication of derivatives in a stochastic volatility model under ...
This chapter focuses on stochastic control and decision processes that occur in a variety of theoret...
In recent years, there has been a growing interest in developing statistical learning methods to pro...
This thesis presents novel methods for computing optimal pre-commitment strategies in time-inconsist...
This thesis considers several optimal stopping problems motivated by mathematical fi- nance, using t...
The classical optimal control problems for discrete-time, transient Markov processes are infinite ho...
The central theme of this thesis is the behavior of the value function of general optimal stopping p...
We study numerical approximations for the payoff function of the stochastic optimal stopping and con...
We study a maturity randomization technique for approximating optimal control problems. The algorith...
American options are actively traded worldwide on exchanges, thus making their accurate and efficien...
Stochastic programming is a mathematical optimization model for decision making when the uncertainty...
American options are actively traded worldwide on exchanges, thus making their accurate and efficien...
The following thesis is divided in two main topics. The first part studies variations of optimal pre...
We consider a linear system affected by an additive stochastic disturbance and address the design of...
The dissertation studies a discretionary stopping problem in stochastic impulse control with a quant...
In this paper we discuss the superreplication of derivatives in a stochastic volatility model under ...
This chapter focuses on stochastic control and decision processes that occur in a variety of theoret...
In recent years, there has been a growing interest in developing statistical learning methods to pro...
This thesis presents novel methods for computing optimal pre-commitment strategies in time-inconsist...
This thesis considers several optimal stopping problems motivated by mathematical fi- nance, using t...
The classical optimal control problems for discrete-time, transient Markov processes are infinite ho...
The central theme of this thesis is the behavior of the value function of general optimal stopping p...
We study numerical approximations for the payoff function of the stochastic optimal stopping and con...