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KERNEL ESTIMATION OF SPOT VOLATILITY WITH MICROSTRUCTURE NOISE USING PRE-AVERAGING

Published online by Cambridge University Press:  18 October 2022

José E. Figueroa-López*
Affiliation:
Washington University in St. Louis
Bei Wu
Affiliation:
Washington University in St. Louis
*
Address correspondence to José E. Figueroa-López, Department of Mathematics and Statistics, Washington University in St. Louis, St. Louis, MO 63130, USA; e-mail: figueroa-lopez@wustl.edu.

Abstract

We revisit the problem of estimating the spot volatility of an Itô semimartingale using a kernel estimator. A central limit theorem (CLT) with an optimal convergence rate is established for a general two-sided kernel. A new pre-averaging/kernel estimator for spot volatility is also introduced to handle the microstructure noise of ultra high-frequency observations. A CLT for the estimation error of the new estimator is obtained, and the optimal selection of the bandwidth and kernel function is subsequently studied. It is shown that the pre-averaging/kernel estimator’s asymptotic variance is minimal for two-sided exponential kernels, hence justifying the need of working with kernels of unbounded support. Feasible implementation of the proposed estimators with optimal bandwidth is developed as well. Monte Carlo experiments confirm the superior performance of the new method.

Type
ARTICLES
Copyright
© The Author(s), 2022. Published by Cambridge University Press

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Footnotes

The authors are truly grateful to the Editor (Dr. Peter Phillips), the Co-Editor (Dr. Dennis Kristensen), and two anonymous referees for their numerous suggestions that helped to significantly improve the original manuscript. The research of the first author was supported in part by the NSF Grants DMS-2015323 and DMS-1613016.

References

REFERENCES

Aït-Sahalia, Y. & Jacod, J. (2014) High-Frequency Financial Econometrics . Princeton University Press.Google Scholar
Aït-Sahalia, Y. & Xiu, D. (2019) Principal component analysis of high-frequency data. Journal of the American Statistical Association 114(525), 287303.CrossRefGoogle Scholar
Alvarez, A., Panloup, F., Pontier, M., & Savy, N. (2012) Estimation of the instantaneous volatility. Statistical Inference for Stochastic Processes 15(1), 2759.CrossRefGoogle Scholar
Bandi, F. & Russell, J. (2008) Microstructure noise, realized volatility and optimal sampling. Review of Economic Studies 75, 339369.CrossRefGoogle Scholar
Barndorff-Nielsen, O.E., Hansen, P.R., Lunde, A., & Shephard, N. (2008) Designing realized kernels to measure the ex post variation of equity prices in the presence of noise. Econometrica 76(6), 14811536.Google Scholar
Chen, R.Y. (2019) Inference for Volatility Functionals of Multivariate Itô Semimartingales Observed with Jump and Noise. Working paper. Available at arXiv:1810.04725v2.Google Scholar
Fan, J. & Wang, Y. (2008) Spot volatility estimation for high-frequency data. Statistics and its Interface 1(2), 279288.CrossRefGoogle Scholar
Figueroa-López, J.E., Gong, R., & Han, Y. (2022) Estimation of a tempered stable Lévy model of infinite variation. Methodology and Computing in Applied Probability 24(2), 713747.CrossRefGoogle Scholar
Figueroa-López, J.E. & Li, C. (2020a) Optimal kernel estimation of spot volatility of stochastic differential equations. Stochastic Processes and their Applications 130(8), 46934720.CrossRefGoogle Scholar
Figueroa-López, J.E. & Li, C. (2020b) Supplement to “Optimal kernel estimation of spot volatility of stochastic differential equations.” Available at https://sites.wustl.edu/figueroa/.CrossRefGoogle Scholar
Figueroa-López, J.E. & Mancini, C. (2019) Optimum thresholding using mean and conditional mean square error. Journal of Econometrics 208(1), 179210.CrossRefGoogle Scholar
Figueroa-López, J.E. & Wu, B. (2022) Kernel estimation of spot volatility with microstructure noise using pre-averaging. Preprint, arXiv:2004.01865v3.CrossRefGoogle Scholar
Foster, D. & Nelson, D. (1996) Continuous record asymptotics for rolling sample variance estimators. Econometrica 64(1), 139174.CrossRefGoogle Scholar
Hansen, P. & Lunde, A. (2006) Realized variance and market microstructure noise. Journal of Business and Economic Statistics 24, 127218.CrossRefGoogle Scholar
Huang, X. & Tauchen, G. (2005) The relative contribution of jumps to total price variance. Journal of Financial Econometrics 3(4), 456499.CrossRefGoogle Scholar
Jacod, J., Li, Y., Mykland, P.A., Podolskij, M., & Vetter, M. (2009) Microstructure noise in the continuous case: The pre-averaging approach. Stochastic Processes and their Applications 119(7), 22492276.CrossRefGoogle Scholar
Jacod, J. & Mykland, P.A. (2015) Microstructure noise in the continuous case: Approximate efficiency of the adaptive pre-averaging method. Stochastic Processes and their Applications 125(8), 29102936.CrossRefGoogle Scholar
Jacod, J., Podolskij, M., & Vetter, M. (2010) Limit theorems for moving averages of discretized processes plus noise. Annals of Statistics 38(3), 14781545.CrossRefGoogle Scholar
Jacod, J. & Protter, P. (2011) Discretization of Processes . Springer Science & Business Media.Google Scholar
Jacod, J. & Rosenbaum, M. (2013) Quarticity and other functionals of volatility: Efficient estimation. Annals of Statistics 41(3), 14621484.CrossRefGoogle Scholar
Jacod, J. & Todorov, V. (2014) Efficient estimation of integrated volatility in presence of infinite variation jumps. Annals of Statistics 42(3), 10291069.Google Scholar
Kristensen, D. (2010) Nonparametric filtering of the realized spot volatility: A kernel-based approach. Econometric Theory 26(1), 6093.CrossRefGoogle Scholar
Li, J., Liu, Y., & Xiu, D. (2019) Efficient estimation of integrated volatility functionals via multiscale jackknife. Annals of Statistics 47(1), 156176.CrossRefGoogle Scholar
Li, J., Todorov, V., & Tauchen, G. (2017) Adaptive estimation of continuous-time regression models using high-frequency data. Journal of Econometrics 200(1), 3647.CrossRefGoogle Scholar
Li, J. & Xiu, D. (2016) Generalized method of integrated moments for high-frequency data. Econometrica 84(4), 16131633.CrossRefGoogle Scholar
Mancini, C. (2009) Non-parametric threshold estimation for models with stochastic diffusion coefficient and jumps. Scandinavian Journal of Statistics 36(2), 270296.CrossRefGoogle Scholar
Mancini, C., Mattiussi, V., & Renò, R. (2015) Spot volatility estimation using delta sequences. Finance and Stochastics 19(2), 261293.CrossRefGoogle Scholar
Mykland, P. & Zhang, L. (2012) The econometrics of high-frequency data. In Kessler, M., Lindner, A., & Sorensen, M. (eds.), Statistical Methods for Stochastic Differential Equations . Chapman and Hall/CRC, pp. 109190.CrossRefGoogle Scholar
Mykland, P.A. & Zhang, L. (2009) Inference for continuous semimartingales observed at high frequency. Econometrica 77(5), 14031445.Google Scholar
Parzen, E. (1962) On estimation of a probability density function and mode. The Annals of Mathematical Statistics 33(3), 10651076.CrossRefGoogle Scholar
Podolskij, M. & Vetter, M. (2009) Estimation of volatility functionals in the simultaneous presence of microstructure noise and jumps. Bernoulli 15(3), 634658.CrossRefGoogle Scholar
Rosenblatt, M. (1956) Remarks on some nonparametric estimates of a density function. The Annals of Mathematical Statistics 27(3), 832837.CrossRefGoogle Scholar
van Eeden, C. (1985) Mean integrated squared error of kernel estimators when the density and its derivative are not necessarily continuous. Annals of the Institute of Statistical Mathematics 37, 461472.CrossRefGoogle Scholar
Xiu, D. (2010) Quasi-maximum likelihood estimation of volatility with high frequency data. Journal of Econometrics 159(1), 235250.CrossRefGoogle Scholar
Yu, C., Fang, Y., Li, Z., Zhang, B., & Zhao, X. (2014a) Non-parametric estimation of high-frequency spot volatility for Brownian semimartingale with jumps. Journal of Time Series Analysis 35, 572591.CrossRefGoogle Scholar
Yu, C., Fang, Y., Li, Z., Zhang, B., & Zhao, X. (2014b) Kernel filtering of spot volatility in presence of Lévy jumps and market microstructure noise. Preprint. Available at https://mpra.ub.uni-muenchen.de/63293/1/MPRA_paper_63293.pdf.Google Scholar
Zhang, L. (2006) Efficient estimation of stochastic volatility using noisy observations: A multi-scale approach. Bernoulli 12(6), 10191043.CrossRefGoogle Scholar
Zhang, L., Mykland, P.A., & Aït-Sahalia, Y. (2005) A tale of two time scales: Determining integrated volatility with noisy high-frequency data. Journal of the American Statistical Association 100(472), 13941411.CrossRefGoogle Scholar
Zu, Y. & Boswijk, H.P. (2014) Estimating spot volatility with high-frequency financial data. Journal of Econometrics 181(2), 117135.CrossRefGoogle Scholar