A haar: fisz technique for locally stationary volatility estimation

Citation
Fryzlewicz, Piotr et al., A haar: fisz technique for locally stationary volatility estimation, Biometrika , 93(3), 2006, pp. 687-704
Journal title
ISSN journal
00063444
Volume
93
Issue
3
Year of publication
2006
Pages
687 - 704
Database
ACNP
SICI code
Abstract
We consider a locally stationary model for financial log-returns whereby the returns are independent and the volatility is a piecewise-constant function with jumps of an unknown number and locations, defined on a compact interval to enable a meaningful estimation theory. We demonstrate that the model explains well the common characteristics of logreturns. We propose a new wavelet thresholding algorithm for volatility estimation in this model, in which Haar wavelets are combined with the variance-stabilising Fisz transform. The resulting volatility estimator is mean-square consistent with a near-parametric rate, does not require any pre-estimates, is rapidly computable and is easily implemented. We also discuss important variations on the choice of estimation parameters. We show that our approach both gives a very good fit to selected currency exchange datasets, and achieves accurate long- and short-term volatility forecasts in comparison to the GARCH(1, 1) and moving window techniques.