Regime-switching stochastic volatility model: estimation and calibration to VIX options |
| |
Authors: | Stéphane Goutte Amine Ismail Huyên Pham |
| |
Affiliation: | 1. LED, Université Paris 8, Saint-Denis Cedex, France;2. Department of Applied Economics, PSB, Paris School of Business, Paris, Francestephane.goutte@univ-paris8.fr;4. LPMA, Université Paris Diderot Batiment Sophie Germain, Case 7012, Avenue de France, Paris Cedex, France;5. Natixis, Pierre-Mendes-France, Paris, France |
| |
Abstract: | We develop and implement a method for maximum likelihood estimation of a regime-switching stochastic volatility model. Our model uses a continuous time stochastic process for the stock dynamics with the instantaneous variance driven by a Cox–Ingersoll–Ross process and each parameter modulated by a hidden Markov chain. We propose an extension of the EM algorithm through the Baum–Welch implementation to estimate our model and filter the hidden state of the Markov chain while using the VIX index to invert the latent volatility state. Using Monte Carlo simulations, we test the convergence of our algorithm and compare it with an approximate likelihood procedure where the volatility state is replaced by the VIX index. We found that our method is more accurate than the approximate procedure. Then, we apply Fourier methods to derive a semi-analytical expression of S&P500 and VIX option prices, which we calibrate to market data. We show that the model is sufficiently rich to encapsulate important features of the joint dynamics of the stock and the volatility and to consistently fit option market prices. |
| |
Keywords: | Regime-switching model stochastic volatility implied volatility EM algorithm VIX index options Baum–Welch algorithm |
|
|