Generalised Geometric Brownian Motion: Theory and Applications to Option Pricing
Abstract
Classical option pricing schemes assume that the value of a financial asset follows a geometric Brownian motion (GBM). However, a growing body of studies suggest that a simple GBM trajectory is not an adequate representation for asset dynamics, due to irregularities found when comparing its properties with empirical distributions. As a solution, we investigate a generalisation of GBM where the introduction of a memory kernel critically determines the behaviour of the stochastic process. We find the general expressions for the moments, log-moments, and the expectation of the periodic log returns, and then obtain the corresponding probability density functions using the subordination approach. Particularly, we consider subdiffusive GBM (sGBM), tempered sGBM, a mix of GBM and sGBM, and a mix of sGBMs. We utilise the resulting generalised GBM (gGBM) in order to examine the empirical performance of a selected group of kernels in the pricing of European call options. Our results indicate that the performance of a kernel ultimately depends on the maturity of the option and its moneyness.
- Publication:
-
Entropy
- Pub Date:
- December 2020
- DOI:
- arXiv:
- arXiv:2011.00312
- Bibcode:
- 2020Entrp..22.1432S
- Keywords:
-
- geometric Brownian motion;
- Fokker–Planck equation;
- Black–Scholes model;
- option pricing;
- Quantitative Finance - Pricing of Securities
- E-Print:
- doi:10.3390/e22121432