In this paper, we propose using kernel ridge regression (KRR) to avoid the step of selecting basis functions for regression-based approaches in pricing high-dimensional American options by simulation. Our contribution is threefold. Firstly, we systematically introduce the main idea and theory of KRR and apply it to American option pricing for the first time. Secondly, we show how to use KRR with the Gaussian kernel in the regression-later method and give the computationally efficient formulas for estimating the continuation values and the Greeks. Thirdly, we propose to accelerate and improve the accuracy of KRR by performing local regression based on the bundling technique. The numerical test results show that our method is robust and has b...
American-style derivatives remain one of the most complex financial instruments to price due to the...
Pricing of American options can be achieved by solving optimal stopping problems. This in turn can b...
We investigate the performance of the Ordinary Least Squares (OLS) regression method in Monte Carlo ...
In this paper, we propose using kernel ridge regression (KRR) to avoid the step of selecting basis f...
American option pricing has been an active research area in financial engineering over the past few ...
Valuation of an American option with Monte Carlo methods is one of the most important and difficult ...
In this dissertation, we discuss how to price American-style options. Our aim is to study and improv...
This dissertation explores the problem of pricing American options in high dimensions using machine ...
Includes abstract.Includes bibliographical references.We give a review of regression-based Monte Car...
This paper presents a Monte Carlo algorithm to price American op-tions written on multiple assets. S...
Abstract In this article we give a review of regression-based Monte Carlo methods for pricing Americ...
This paper presents a combined method based on non parametric regression and Monte Carlo algorithm t...
This thesis reviewed a number of Monte Carlo based methods for pricing American options. The least-s...
Pricing of American options in discrete time is considered, where the option is allowed to be based ...
The pricing of American-style options by simulation-based methods is an important but difficult task...
American-style derivatives remain one of the most complex financial instruments to price due to the...
Pricing of American options can be achieved by solving optimal stopping problems. This in turn can b...
We investigate the performance of the Ordinary Least Squares (OLS) regression method in Monte Carlo ...
In this paper, we propose using kernel ridge regression (KRR) to avoid the step of selecting basis f...
American option pricing has been an active research area in financial engineering over the past few ...
Valuation of an American option with Monte Carlo methods is one of the most important and difficult ...
In this dissertation, we discuss how to price American-style options. Our aim is to study and improv...
This dissertation explores the problem of pricing American options in high dimensions using machine ...
Includes abstract.Includes bibliographical references.We give a review of regression-based Monte Car...
This paper presents a Monte Carlo algorithm to price American op-tions written on multiple assets. S...
Abstract In this article we give a review of regression-based Monte Carlo methods for pricing Americ...
This paper presents a combined method based on non parametric regression and Monte Carlo algorithm t...
This thesis reviewed a number of Monte Carlo based methods for pricing American options. The least-s...
Pricing of American options in discrete time is considered, where the option is allowed to be based ...
The pricing of American-style options by simulation-based methods is an important but difficult task...
American-style derivatives remain one of the most complex financial instruments to price due to the...
Pricing of American options can be achieved by solving optimal stopping problems. This in turn can b...
We investigate the performance of the Ordinary Least Squares (OLS) regression method in Monte Carlo ...