Taylor & Francis Group
Browse

Nonparametric Option Pricing with Generalized Entropic Estimators

Download (624.6 kB)
Version 2 2022-10-06, 19:40
Version 1 2022-08-22, 12:40
journal contribution
posted on 2022-10-06, 19:40 authored by Caio Almeida, Gustavo Freire, Rafael Azevedo, Kym Ardison

We propose a family of nonparametric estimators for an option price that require only the use of underlying return data, but can also easily incorporate information from observed option prices. Each estimator comes from a risk-neutral measure minimizing generalized entropy according to a different Cressie–Read discrepancy. We apply our method to price S&P 500 options and the cross-section of individual equity options, using distinct amounts of option data in the estimation. Estimators incorporating mild nonlinearities produce optimal pricing accuracy within the Cressie–Read family and outperform several benchmarks such as Black–Scholes and different GARCH option pricing models. Overall, we provide a powerful option pricing technique suitable for scenarios of limited option data availability.

Funding

This study was financed in part by the Coordenação de Aperfeiçoamento de Pessoal de Nível Superior - Brasil (CAPES) - Finance Code 001.

History