The Chebyshev Method for the Implied Volatility

32 Pages Posted: 23 Dec 2019

See all articles by Kathrin Glau

Kathrin Glau

Queen Mary University of London

Paul Herold

Technical University Munich

Dilip B. Madan

University of Maryland - Robert H. Smith School of Business

Christian Pötz

Queen Mary University of London

Date Written: December 21, 2019

Abstract

The implied volatility is a crucial element in any financial toolbox, since it is used to both quote and hedge options as well as for model calibration. In contrast to the Black–Scholes formula, its inverse, the implied volatility is not explicitly available, and numerical approximation is required. In this paper, we propose a bivariate interpolation of the implied volatility surface based on Chebyshev polynomials. This yields a closed-form approximation of the implied volatility, which is easy to implement and to maintain. We prove a subexponential error decay. This allows us to obtain an accuracy close to machine precision with polynomials of a low degree. We compare the performance of our chosen method in terms of runtime and accuracy with the most common reference methods. In contrast to existing interpolation methods, our method is able to compute the implied volatility for all relevant option data. We use numerical experiments to confirm this results in a considerable increase in efficiency, especially for large data sets.

Keywords: ,comma separated,

Suggested Citation

Glau, Kathrin and Herold, Paul and Madan, Dilip B. and Pötz, Christian, The Chebyshev Method for the Implied Volatility (December 21, 2019). Journal of Computational Finance, Vol. 23, No. 3, 2019, Available at SSRN: https://ssrn.com/abstract=3507971

Kathrin Glau

Queen Mary University of London ( email )

Mile End Road
London, London E1 4NS
United Kingdom

Paul Herold

Technical University Munich ( email )

Germany

Dilip B. Madan

University of Maryland - Robert H. Smith School of Business ( email )

College Park, MD 20742-1815
United States
301-405-2127 (Phone)
301-314-9157 (Fax)

Christian Pötz (Contact Author)

Queen Mary University of London ( email )

Mile End Road
London, London E1 4NS
United Kingdom

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