On wavelet analysis of the nth order fractional Brownian motion

被引:0
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作者
Hedi Kortas
Zouhaier Dhifaoui
Samir Ben Ammou
机构
[1] Higher Institute of Management,Computational Mathematics Laboratory
[2] Faculty of Science,undefined
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关键词
th order fBm; Scaling exponent; Wavelet transform; Derivative operator; Signal-to-noise ratio; Weighted least squares estimator;
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摘要
In this paper, we investigate the use of wavelet techniques in the study of the nth order fractional Brownian motion (n-fBm). First, we exploit the continuous wavelet transform’s capabilities in derivative calculation to construct a two-step estimator of the scaling exponent of the n-fBm process. We show, via simulation, that the proposed method improves the estimation performance of the n-fBm signals contaminated by large-scale noise. Second, we analyze the statistical properties of the n-fBm process in the time-scale plan. We demonstrate that, for a convenient choice of the wavelet basis, the discrete wavelet detail coefficients of the n-fBm process are stationary at each resolution level whereas their variance exhibits a power-law behavior. Using the latter property, we discuss a weighted least squares regression based-estimator for this class of stochastic process. Experiments carried out on simulated and real-world datasets prove the relevance of the proposed method.
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页码:251 / 277
页数:26
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