Broadie and Glasserman proposed a simulation-based method they named {\em stochastic mesh} for pricing high-dimensional American options. Based on simulated states of the assets underlying the option at each exercise opportunity, the method produces an estimator of the option value at each sampled state. Under the mild assumption of the finiteness of certain moments, we derive an asymptotic upper bound on the probability of error of the mesh estimator, where both the error size and the probability bound vanish as the sample size increases. We include the empirical performance for the test problems used by Broadie and Glasserman in a recent unpublished manuscript. We find that the mesh estimator has large bias that decays very slowly with th...
We analyze the stochastic mesh method (SMM) as well as the least squares method (LSM) commonly used ...
International audienceIn this paper we propose an efficient method to compute the price of multi-ass...
We analyze the stochastic mesh method (SMM) as well as the least squares method (LSM) commonly used...
Broadie and Glasserman a proposed a simulationbased method using a stochastic mesh for pricing high...
Broadie and Glasserman (2004) proposed a Monte Carlo algorithm they named “stochastic mesh” for pric...
We develop and study generalpurpose techniques for improving the e ciency of the stochasticmeshmetho...
This paper considers the problem of pricing options with early-exercise features whose payo depends ...
rlo simulation. First, we develop a mesh-based, biased-low estimator. By recursively averaging the...
We discuss a parallel implementation of Monte Carlo simulation algorithms for estimating the price o...
We revisit the stochastic mesh method for pricing American options-from a conditioning viewpoint-rat...
Stochastic approximation is one of the oldest approaches for solving stochastic optimization problem...
One looks at the pricing of American options using Monte Carlo simulations. The selected theories on...
AbstractWe propose and test a new method for pricing American options in a high-dimensional setting....
In this paper we discuss accuracy issues of the Monte-Carlo method for valuing American options. Two...
Valuing American options is a central problem in option pricing since the early-exercise feature is ...
We analyze the stochastic mesh method (SMM) as well as the least squares method (LSM) commonly used ...
International audienceIn this paper we propose an efficient method to compute the price of multi-ass...
We analyze the stochastic mesh method (SMM) as well as the least squares method (LSM) commonly used...
Broadie and Glasserman a proposed a simulationbased method using a stochastic mesh for pricing high...
Broadie and Glasserman (2004) proposed a Monte Carlo algorithm they named “stochastic mesh” for pric...
We develop and study generalpurpose techniques for improving the e ciency of the stochasticmeshmetho...
This paper considers the problem of pricing options with early-exercise features whose payo depends ...
rlo simulation. First, we develop a mesh-based, biased-low estimator. By recursively averaging the...
We discuss a parallel implementation of Monte Carlo simulation algorithms for estimating the price o...
We revisit the stochastic mesh method for pricing American options-from a conditioning viewpoint-rat...
Stochastic approximation is one of the oldest approaches for solving stochastic optimization problem...
One looks at the pricing of American options using Monte Carlo simulations. The selected theories on...
AbstractWe propose and test a new method for pricing American options in a high-dimensional setting....
In this paper we discuss accuracy issues of the Monte-Carlo method for valuing American options. Two...
Valuing American options is a central problem in option pricing since the early-exercise feature is ...
We analyze the stochastic mesh method (SMM) as well as the least squares method (LSM) commonly used ...
International audienceIn this paper we propose an efficient method to compute the price of multi-ass...
We analyze the stochastic mesh method (SMM) as well as the least squares method (LSM) commonly used...