ESTIMATING THE FRACTAL DIMENSION OF THE S&P 500 INDEX USING WAVELET ANALYSIS
S&P 500 index data sampled at one-minute intervals over the course of 11.5 years (January 1989–May 2000) is analyzed, and in particular the Hurst parameter over segments of stationarity (the time period over which the Hurst parameter is almost constant) is estimated. An asymptotically unbiased a...
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Veröffentlicht in: | International journal of theoretical and applied finance 2004-08, Vol.7 (5), p.615-643 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | S&P 500 index data sampled at one-minute intervals over the
course of 11.5 years (January 1989–May 2000) is analyzed, and in
particular the Hurst parameter over segments of stationarity (the
time period over which the Hurst parameter is almost constant) is
estimated. An asymptotically unbiased and efficient estimator
using the log-scale spectrum is employed. The estimator is
asymptotically Gaussian and the variance of the estimate that is
obtained from a data segment of N points is of order
$\frac{1}{N}$
.
Wavelet analysis is tailor-made for the high
frequency data set, since it has low computational complexity due
to the pyramidal algorithm for computing the detail coefficients.
This estimator is robust to additive non-stationarities, and here
it is shown to exhibit some degree of robustness to multiplicative
non-stationarities, such as seasonalities and volatility
persistence, as well. This analysis suggests that the market became
more efficient in the period 1997–2000. |
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ISSN: | 0219-0249 1793-6322 |
DOI: | 10.1142/S021902490400258X |