A Solution to the Time-Scale Fractional Puzzle in the Implied Volatility

In the option pricing literature, it is well known that (i) the decrease in the smile amplitude is much slower than the standard stochastic volatility models and (ii) the term structure of the at-the-money volatility skew is approximated by a power-law function with the exponent close to zero. These...

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Main Authors: Hideharu Funahashi, Masaaki Kijima
Format: Article
Language:English
Published: MDPI AG 2017-11-01
Series:Fractal and Fractional
Subjects:
Online Access:https://www.mdpi.com/2504-3110/1/1/14
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spelling doaj-c5e2e44010514a7c89972ef0fa9ec8572021-04-02T06:01:43ZengMDPI AGFractal and Fractional2504-31102017-11-01111410.3390/fractalfract1010014fractalfract1010014A Solution to the Time-Scale Fractional Puzzle in the Implied VolatilityHideharu Funahashi0Masaaki Kijima1Mizuho Securities Co. Ltd., Tokyo 100-0004, JapanMaster of Finance Program, Tokyo Metropolitan University, Tokyo 100-0005, JapanIn the option pricing literature, it is well known that (i) the decrease in the smile amplitude is much slower than the standard stochastic volatility models and (ii) the term structure of the at-the-money volatility skew is approximated by a power-law function with the exponent close to zero. These stylized facts cannot be captured by standard models, and while (i) has been explained by using a fractional volatility model with Hurst index H > 1 / 2 , (ii) is proven to be satisfied by a rough volatility model with H < 1 / 2 under a risk-neutral measure. This paper provides a solution to this fractional puzzle in the implied volatility. Namely, we construct a two-factor fractional volatility model and develop an approximation formula for European option prices. It is shown through numerical examples that our model can resolve the fractional puzzle, when the correlations between the underlying asset process and the factors of rough volatility and persistence belong to a certain range. More specifically, depending on the three correlation values, the implied volatility surface is classified into four types: (1) the roughness exists, but the persistence does not; (2) the persistence exists, but the roughness does not; (3) both the roughness and the persistence exist; and (4) neither the roughness nor the persistence exist.https://www.mdpi.com/2504-3110/1/1/14fractional Brownian motionHurst indexvolatility skewrough volatilitysmile amplitudevolatility persistence
collection DOAJ
language English
format Article
sources DOAJ
author Hideharu Funahashi
Masaaki Kijima
spellingShingle Hideharu Funahashi
Masaaki Kijima
A Solution to the Time-Scale Fractional Puzzle in the Implied Volatility
Fractal and Fractional
fractional Brownian motion
Hurst index
volatility skew
rough volatility
smile amplitude
volatility persistence
author_facet Hideharu Funahashi
Masaaki Kijima
author_sort Hideharu Funahashi
title A Solution to the Time-Scale Fractional Puzzle in the Implied Volatility
title_short A Solution to the Time-Scale Fractional Puzzle in the Implied Volatility
title_full A Solution to the Time-Scale Fractional Puzzle in the Implied Volatility
title_fullStr A Solution to the Time-Scale Fractional Puzzle in the Implied Volatility
title_full_unstemmed A Solution to the Time-Scale Fractional Puzzle in the Implied Volatility
title_sort solution to the time-scale fractional puzzle in the implied volatility
publisher MDPI AG
series Fractal and Fractional
issn 2504-3110
publishDate 2017-11-01
description In the option pricing literature, it is well known that (i) the decrease in the smile amplitude is much slower than the standard stochastic volatility models and (ii) the term structure of the at-the-money volatility skew is approximated by a power-law function with the exponent close to zero. These stylized facts cannot be captured by standard models, and while (i) has been explained by using a fractional volatility model with Hurst index H > 1 / 2 , (ii) is proven to be satisfied by a rough volatility model with H < 1 / 2 under a risk-neutral measure. This paper provides a solution to this fractional puzzle in the implied volatility. Namely, we construct a two-factor fractional volatility model and develop an approximation formula for European option prices. It is shown through numerical examples that our model can resolve the fractional puzzle, when the correlations between the underlying asset process and the factors of rough volatility and persistence belong to a certain range. More specifically, depending on the three correlation values, the implied volatility surface is classified into four types: (1) the roughness exists, but the persistence does not; (2) the persistence exists, but the roughness does not; (3) both the roughness and the persistence exist; and (4) neither the roughness nor the persistence exist.
topic fractional Brownian motion
Hurst index
volatility skew
rough volatility
smile amplitude
volatility persistence
url https://www.mdpi.com/2504-3110/1/1/14
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