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Statistical inference for rough volatility: Central limit theorems

3 October 2022
Carsten H. Chong
M. Hoffmann
Yanghui Liu
M. Rosenbaum
Grégoire Szymanski
ArXiv (abs)PDFHTML
Abstract

In recent years, there has been substantive empirical evidence that stochastic volatility is rough. In other words, the local behavior of stochastic volatility is much more irregular than semimartingales and resembles that of a fractional Brownian motion with Hurst parameter H<0.5H<0.5H<0.5. In this paper, we derive a consistent and asymptotically mixed normal estimator of HHH based on high-frequency price observations. In contrast to previous works, we work in a semiparametric setting and do not assume any a priori relationship between volatility estimators and true volatility. Furthermore, our estimator attains a rate of convergence that is known to be optimal in a minimax sense in parametric rough volatility models.

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