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Reducing the Bias of the Smoothed Log Periodogram Regression for Financial High-Frequency Data
2020
Econometrics
For typical sample sizes occurring in economic and financial applications, the squared bias of estimators for the memory parameter is small relative to the variance. Smoothing is therefore a suitable way to improve the performance in terms of the mean squared error. However, in an analysis of financial high-frequency data, where the estimates are obtained separately for each day and then combined by averaging, the variance decreases with the sample size but the bias remains fixed. This paper
doi:10.3390/econometrics8040040
fatcat:fzahfayzojeyzbc6vlowpvgrzi