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Open MathematicsVolume 15, Issue 1, 2017, Pages 679-704

Calibration and simulation of Heston model(Article)(Open Access)

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  • NTIS-New Technologies for the Information Society, Faculty of Applied Sciences, University of West Bohemia, Univerzitní 8, Plzeň, 306 14, Czech Republic

Abstract

We calibrate Heston stochastic volatility model to real market data using several optimization techniques. We compare both global and local optimizers for different weights showing remarkable differences even for data (DAX options) from two consecutive days. We provide a novel calibration procedure that incorporates the usage of approximation formula and outperforms significantly other existing calibration methods. We test and compare several simulation schemes using the parameters obtained by calibration to real market data. Next to the known schemes (log-Euler, Milstein, QE, Exact scheme, IJK) we introduce also a new method combining the Exact approach and Milstein (E+M) scheme. Test is carried out by pricing European call options by Monte Carlo method. Presented comparisons give an empirical evidence and recommendations what methods should and should not be used and why. We further improve the QE scheme by adapting the antithetic variates technique for variance reduction. © 2017 Mrázek and Pospíšil 2017.

Author keywords

CalibrationHeston modelMonte Carlo simulationOption pricingStochastic volatility
  • ISSN: 23915455
  • Source Type: Journal
  • Original language: English
  • DOI: 10.1515/math-2017-0058
  • Document Type: Article
  • Publisher: De Gruyter Open Ltd

  Pospíšil, J.; NTIS-New Technologies for the Information Society, Faculty of Applied Sciences, University of West Bohemia, Univerzitní 8, Plzeň, Czech Republic;
© Copyright 2017 Elsevier B.V., All rights reserved.

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