

In mathematical finance, a process of calibrating stochastic volatility (SV) option pricing models to real market data involves a numerical calculation of integrals that depend on several model parameters. This optimization task consists of large number of integral evaluations with high precision and low computational time requirements. However, for some model parameters, many numerical quadrature algorithms fail to meet these requirements. We can observe an enormous increase in function evaluations, serious precision problems and a significant increase of computational time. In this paper, we numerically analyse these problems and show that they are especially caused by inaccurately evaluated integrands. We propose a fast regime switching algorithm that tells if it is sufficient to evaluate the integrand in standard double arithmetic or if a higher precision arithmetic has to be used. We compare and recommend numerical quadratures for typical SV models and different parameter values, especially for problematic cases. © 2019, © 2019 Informa UK Limited, trading as Taylor & Francis Group.
| Engineering controlled terms: | CostsEconomic analysisElectronic tradingFinancial marketsNumerical modelsStochastic systems |
|---|---|
| Engineering uncontrolled terms | Adaptive quadratureNumerical integrationsOption pricingStochastic Volatility ModelVariable precision arithmetic |
| Engineering main heading: | Stochastic models |
| Funding sponsor | Funding number | Acronym |
|---|---|---|
| Grantová Agentura České Republiky | LM2015042 | GA ČR |
This work was partially supported by the Grantov? Agentura ?esk? Republiky (GACR), grant numbers GA14-11559S Analysis of Fractional Stochastic Volatility Models and their Grid Implementation and GA18-16680S Rough models of fractional stochastic volatility. Computational resources were provided by the CESNET LM2015042 and the CERIT Scientific Cloud LM2015085, provided under the programme ?Projects of Large Research, Development, and Innovations Infrastructure?.
Pospíšil, J.; NTIS - New Technologies for the Information Society, Faculty of Applied Sciences, University of West Bohemia, Univerzitní 8, Plzeň, Czech Republic;
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