Maximum likelihood estimation for stochastic volatility models (2007)
| Venue: | JOURNAL OF FINANCIAL ECONOMICS |
| Citations: | 16 - 1 self |
BibTeX
@ARTICLE{Aït-Sahalia07maximumlikelihood,
author = {Yacine Aït-Sahalia and Robert Kimmel},
title = {Maximum likelihood estimation for stochastic volatility models},
journal = {JOURNAL OF FINANCIAL ECONOMICS},
year = {2007},
volume = {83},
number = {413}
}
OpenURL
Abstract
We develop and implement a method for maximum likelihood estimation in closed-form of stochastic volatility models. Using Monte Carlo simulations, we compare a full likelihood procedure, where an option price is inverted into the unobservable volatility state, to an approximate likelihood procedure where the volatility state is replaced by proxies based on the implied volatility of a shortdated at-the-money option. The approximation results in a small loss of accuracy relative to the standard errors due to sampling noise. We apply this method to market prices of index options for several stochastic volatility models, and compare the characteristics of the estimated models. The evidence for a general CEV model, which nests both the affine Heston model and a GARCH model, suggests that the elasticity of variance of volatility lies between that assumed by the two nested models.







