International audienceRecently, various authors proposed Monte-Carlo methods for the computation of American option prices, based on least squares regression. The purpose of this paper is to analyze an algorithm due to Longstaff and Schwartz. This algorithm involves two types of approximation. Approximation one: replace the conditional expectations in the dynamic programming principle by projections on a finite set of functions. Approximation two: use Monte-Carlo simulations and least squares regression to compute the value function of approximation one. Under fairly general conditions, we prove the almost sure convergence of the complete algorithm. We also determine the rate of convergence of approximation two and prove that its normalized...
This paper presents a combined method based on non parametric regression and Monte Carlo algorithm t...
This paper presents a Monte Carlo algorithm to price American op-tions written on multiple assets. S...
Least Squares estimators are notoriously known to generate sub-optimal exercise decisions when deter...
In a recent paper, Longstaff and Schwartz (2001) suggest a method to American option valuation based...
We investigate the performance of the Ordinary Least Squares (OLS) regression method in Monte Carlo ...
This thesis reviewed a number of Monte Carlo based methods for pricing American options. The least-s...
This paper analyses the robustness of Least-Squares Monte Carlo, a techniquerecently proposed by Lon...
This paper introduces alternative methods to least square method (LSM) implemented by Longstaff-Schw...
An American option is a type of option that can be exercised at any time up to its expiration. Ameri...
The paper by Liu (2010) introduces a method termed the canonical least-squares Monte Carlo (CLM) whi...
Pricing of American options in discrete time is considered, where the option is allowed to be based ...
In the finance world, option pricing techniques have become an appealing topic among researchers,...
The purpose of this study is to verify the efficiency and the applicability of the Least-Squares Mon...
In this project we discuss Least Square Monte-Carlo methods for valuing American options on bonds. W...
With regard to a particular derivatives instruments, the famous Black-Scholes model development on 1...
This paper presents a combined method based on non parametric regression and Monte Carlo algorithm t...
This paper presents a Monte Carlo algorithm to price American op-tions written on multiple assets. S...
Least Squares estimators are notoriously known to generate sub-optimal exercise decisions when deter...
In a recent paper, Longstaff and Schwartz (2001) suggest a method to American option valuation based...
We investigate the performance of the Ordinary Least Squares (OLS) regression method in Monte Carlo ...
This thesis reviewed a number of Monte Carlo based methods for pricing American options. The least-s...
This paper analyses the robustness of Least-Squares Monte Carlo, a techniquerecently proposed by Lon...
This paper introduces alternative methods to least square method (LSM) implemented by Longstaff-Schw...
An American option is a type of option that can be exercised at any time up to its expiration. Ameri...
The paper by Liu (2010) introduces a method termed the canonical least-squares Monte Carlo (CLM) whi...
Pricing of American options in discrete time is considered, where the option is allowed to be based ...
In the finance world, option pricing techniques have become an appealing topic among researchers,...
The purpose of this study is to verify the efficiency and the applicability of the Least-Squares Mon...
In this project we discuss Least Square Monte-Carlo methods for valuing American options on bonds. W...
With regard to a particular derivatives instruments, the famous Black-Scholes model development on 1...
This paper presents a combined method based on non parametric regression and Monte Carlo algorithm t...
This paper presents a Monte Carlo algorithm to price American op-tions written on multiple assets. S...
Least Squares estimators are notoriously known to generate sub-optimal exercise decisions when deter...