Parameter calibration of stochastic volatility Heston’s model: Constrained optimization vs. differential evolution

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Abstract

This paper calibrates through loss functions the parameters of Heston’s stochastic volatility model by using two different methods: minimizing a nonlinear objective function (a loss function) with constraints on the values of the parameter and using a differential evolution algorithm. Both methods are applied to implied volatilities on the Mexican Stock Exchange Index with four maturities and twenty-eight strike prices. The selection criterion for the parameters is minimizing the value of the mean square error of the implied volatility. The first method has a better performance with less error and time. However, empirical results show that for both methods the adjustment of implied volatilities is better for options with long-term maturities than for short-term maturities.

Original languageEnglish
Pages (from-to)40-67
Number of pages28
JournalContaduria y Administracion
Volume67
Issue number1
DOIs
StatePublished - 2022

Keywords

  • Contingent pricing
  • Differential evolution
  • Implied volatility
  • Stochastic volatility

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