A0373
Title: Efficient estimation of pricing kernels and market-implied densities
Authors: Jeroen Dalderop - University of Notre Dame (United States) [presenting]
Abstract: The aim is to study the nonparametric identification and estimation of projected pricing kernels implicit in European option prices and underlying asset returns using conditional moment restrictions. The proposed series estimator avoids computing ratios of estimated risk-neutral and physical densities. Instead, we consider efficient estimation based on the conditional Euclidean empirical likelihood or continuously-updated GMM criterion, which takes into account the informativeness of option prices of varying strike prices beyond observed conditioning variables. In a second step, we convert the implied probabilities into predictive densities by matching the informative part of cross-sections of option prices. Empirically, pricing kernels tend to be U-shaped in the S\&P 500 index return given high levels of the VIX, and call and ATM options are more informative about their payoff than put and OTM options.