Title :
Risk-neutral density extraction from option prices: improved pricing with mixture density networks
Author :
Schittenkopf, Christian ; Dorffner, Georg
Author_Institution :
Austrian Res. Inst. for Artificial Intelligence, Vienna, Austria
fDate :
7/1/2001 12:00:00 AM
Abstract :
One of the central goals in finance is to find better models for pricing and hedging financial derivatives such as call and put options. We present a new semi-nonparametric approach to risk-neutral density extraction from option prices, which is based on an extension of the concept of mixture density networks. The central idea is to model the shape of the risk-neutral density in a flexible, nonlinear way as a function of the time horizon. Thereby, stylized facts such as negative skewness and excess kurtosis are captured. The approach is applied to a very large set of intraday options data on the FTSE 100 recorded at LIFFE. It is shown to yield significantly better results in terms of out-of-sample pricing accuracy in comparison to the basic and an extended Black-Scholes model. It is also significantly better than a more elaborate GARCH option pricing model which includes a time-dependent volatility process. From the perspective of risk management, the extracted risk-neutral densities provide valuable information for value-at-risk estimations
Keywords :
Gaussian processes; costing; financial data processing; investment; multilayer perceptrons; risk management; stock markets; Gaussian mixture model; financial derivatives; hedging; mixture density networks; multilayer perceptron; option prices; pricing; risk management; risk-neutral density extraction; Artificial intelligence; Contracts; Data mining; Finance; Helium; Predictive models; Pricing; Risk management; Shape; Stochastic processes;
Journal_Title :
Neural Networks, IEEE Transactions on