Maximum likelihood estimation of stochastic volatility model
Maximum likelihood estimation of stochastic volatility models
Rate this book:
About This Book
"We develop and implement a new 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 the implied volatility of a short dated at-the-money option. We find that the approximation results in a negligible loss of accuracy. 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 model of Heston (1993) and a GARCH model, suggests that the elasticity of variance of volatility lies between that assumed by the two nested models"--National Bureau of Economic Research web site.
Buy This Book
As an Amazon Associate and Bookshop.org affiliate, BookOrb earns from qualifying purchases.
Write a Review
Sign in to write a review.
More by Yacine Aït-Sahalia
Disentangling volatility from
Disentangling volatility from jumps
High frequency market microstr
High frequency market microstructure noise estimates and liquidity measures
How often to sample a continuo
How often to sample a continuous-time process in the presence of market microstructure noise
Ultra high frequency volatilit
Ultra high frequency volatility estimation with dependent microstructure noise