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International Journal of Theoretical and Applied FinanceVolume 24, Issue 2, March 2021, Article number 2150008

Decomposition formula for rough volterra stochastic volatility models(Article)(Open Access)

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  • aUniversitat de Barcelona, Facultat de Matemàtiques, Gran Via 585, Barcelona, 08007, Spain
  • bDepartment of Mathematics, University of West Bohemia, Univerzitní 2732/8, Plzeň, 301 00, Czech Republic
  • cDepartment of Mathematics and Statistics, University of Vaasa, P. O. Box 700, Vaasa, FIN-65101, Finland
  • dErnst and Young, s.r.o. Na Florenci 2116/15, Praha, 110 00, Czech Republic
  • eVidaCaixa S.A., Investment Risk Management Department, C/Juan Gris, 2-8, Barcelona, 08014, Spain

Abstract

The research presented in this paper provides an alternative option pricing approach for a class of rough fractional stochastic volatility models. These models are increasingly popular between academics and practitioners due to their surprising consistency with financial markets. However, they bring several challenges alongside. Most noticeably, even simple nonlinear financial derivatives as vanilla European options are typically priced by means of Monte-Carlo (MC) simulations which are more computationally demanding than similar MC schemes for standard stochastic volatility models. In this paper, we provide a proof of the prediction law for general Gaussian Volterra processes. The prediction law is then utilized to obtain an adapted projection of the future squared volatility-A cornerstone of the proposed pricing approximation. Firstly, a decomposition formula for European option prices under general Volterra volatility models is introduced. Then we focus on particular models with rough fractional volatility and we derive an explicit semi-closed approximation formula. Numerical properties of the approximation for a popular model-The rBergomi model-Are studied and we propose a hybrid calibration scheme which combines the approximation formula alongside MC simulations. This scheme can significantly speed up the calibration to financial markets as illustrated on a set of AAPL options. © 2021 World Scientific Publishing Company.

Author keywords

Bergomi modeldecomposition formulaoption pricingrough volatilityVolterra stochastic volatility

Funding details

Funding sponsor Funding number Acronym
Grantová Agentura České RepublikyGA18-16680S,MEC MTM 2016-76420-PGA ČR
  • 1

    The work of Jan Pospíˇsil was partially supported by the Czech Science Foundation (GACˇR) grant no. GA18-16680S “Rough models of fractional stochastic volatility”. The work of Josep Vives was partially supported by Spanish Grant MEC MTM 2016-76420-P. Computational resources were provided by the CESNET LM2015042 and the CERIT Scientific Cloud LM2015085, provided under the program “Projects of Large Research, Development, and Innovations Infrastructures”. Any opinions expressed in this paper are those of the authors and not necessarily those of Ernst & Young Global Limited or VidaCaixa.

  • ISSN: 02190249
  • Source Type: Journal
  • Original language: English
  • DOI: 10.1142/S0219024921500084
  • Document Type: Article
  • Publisher: World Scientific

  Pospíšil, J.A.N.; Department of Mathematics, University of West Bohemia, Univerzitní 2732/8, Plzeň, Czech Republic;
© Copyright 2021 Elsevier B.V., All rights reserved.

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