Alvarez, Alexander, et al. “Closed‐form Approximated Pricing of Multivariate Derivatives under Switching Regime Models”. Applied Stochastic Models in Business and Industry, 2021, https://doi.org/10.1002/asmb.2635.

Genre

  • Journal Article
Contributors
Author: Alvarez, Alexander
Author: Liu, Kai
Author: Assadi, Atousa
Date Issued
2021
Date Published Online
2021-05-25
Abstract

Markov switching regime models have played an increasingly important role in finance and economics, especially for business cycles and long swings in currencies. Regime-switching models provide a simple way to capture stochastic volatility and thus overcomes the drawback of the classical lognormality assumption characterized by constant volatility. This paper considers multivariate Black and Scholes type models with a Markov regime-switching mechanism. We show that the pricing of some multivariate derivatives under models where the Markov chain has two or three states, can be approximated accurately in closed-form, based on linear and quadratic Taylor polynomials. Closed form approximation methods are computationally advantageous as they perform in constant time, compared with alternative methods such as Monte-Carlo, where the accuracy of the estimation is directly linked to the number of executed simulations.

Language

  • English
Host Title
Applied Stochastic Models in Business and Industry
Host Abbreviated Title
Appl Stochastic Models Bus Ind
ISSN
1526-4025
1524-1904