Volatility of volatility estimation: central limit theorems for the Fourier transform estimator and empirical study of the daily time series stylized Facts

Toscano, G., Livieri, G.ORCID logo, Mancino, M. E. & Marmi, S. (2022). Volatility of volatility estimation: central limit theorems for the Fourier transform estimator and empirical study of the daily time series stylized Facts. Journal of Financial Econometrics, 22(1), 252 - 296. https://doi.org/10.1093/jjfinec/nbac035
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We study the asymptotic normality of two feasible estimators of the integrated volatility of volatility based on the Fourier methodology, which does not require the pre-estimation of the spot volatility. We show that the bias-corrected estimator reaches the optimal rate n1=4, while the estimator without bias-correction has a slower convergence rate and a smaller asymptotic variance. Additionally, we provide simulation results that support the theoretical asymptotic distribution of the rate-efficient estimator and show the accuracy of the latter in comparison with a rate-optimal estimator based on the pre-estimation of the spot volatility. Finally, using the rate-optimal Fourier estimator, we reconstruct the series of the daily volatility of volatility of the S&P500 and EUROSTOXX50 indices over long samples and provide novel insight into the existence of stylized facts about the volatility of volatility dynamics.

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