Artikel

Jump variation estimation with noisy high frequency financial data via wavelets

This paper develops a method to improve the estimation of jump variation using high frequency data with the existence of market microstructure noises. Accurate estimation of jump variation is in high demand, as it is an important component of volatility in finance for portfolio allocation, derivative pricing and risk management. The method has a two-step procedure with detection and estimation. In Step 1, we detect the jump locations by performing wavelet transformation on the observed noisy price processes. Since wavelet coefficients are significantly larger at the jump locations than the others, we calibrate the wavelet coefficients through a threshold and declare jump points if the absolute wavelet coefficients exceed the threshold. In Step 2 we estimate the jump variation by averaging noisy price processes at each side of a declared jump point and then taking the difference between the two averages of the jump point. Specifically, for each jump location detected in Step 1, we get two averages from the observed noisy price processes, one before the detected jump location and one after it, and then take their difference to estimate the jump variation. Theoretically, we show that the two-step procedure based on average realized volatility processes can achieve a convergence rate close to OP(n-4/9), which is better than the convergence rate OP(n-1/4) for the procedure based on the original noisy process, where n is the sample size. Numerically, the method based on average realized volatility processes indeed performs better than that based on the price processes. Empirically, we study the distribution of jump variation using Dow Jones Industrial Average stocks and compare the results using the original price process and the average realized volatility processes.

Language
Englisch

Bibliographic citation
Journal: Econometrics ; ISSN: 2225-1146 ; Volume: 4 ; Year: 2016 ; Issue: 3 ; Pages: 1-26 ; Basel: MDPI

Classification
Wirtschaft
Econometrics
Semiparametric and Nonparametric Methods: General
Single Equation Models; Single Variables: Time-Series Models; Dynamic Quantile Regressions; Dynamic Treatment Effect Models; Diffusion Processes
Model Construction and Estimation
Model Evaluation, Validation, and Selection
Financial Econometrics
Financial Forecasting and Simulation
Subject
high frequency financial data
jump variation
realized volatility
integrated volatility
microstructure noise
wavelet methods
nonparametric methods

Event
Geistige Schöpfung
(who)
Zhang, Xin
Kim, Donggyu
Wang, Yazhen
Event
Veröffentlichung
(who)
MDPI
(where)
Basel
(when)
2016

DOI
doi:10.3390/econometrics4030034
Handle
Last update
10.03.2025, 11:41 AM CET

Data provider

This object is provided by:
ZBW - Deutsche Zentralbibliothek für Wirtschaftswissenschaften - Leibniz-Informationszentrum Wirtschaft. If you have any questions about the object, please contact the data provider.

Object type

  • Artikel

Associated

  • Zhang, Xin
  • Kim, Donggyu
  • Wang, Yazhen
  • MDPI

Time of origin

  • 2016

Other Objects (12)