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Linear fractional stable motion: a wavelet estimator of the $\al$ parameter (1302.1674v1)

Published 7 Feb 2013 in math.ST and stat.TH

Abstract: Linear fractional stable motion, denoted by ${X_{H,\al}(t)}{t\in \R}$, is one of the most classical stable processes; it depends on two parameters $H\in (0,1)$ and $\al\in (0,2)$. The parameter $H$ characterizes the self-similarity property of ${X{H,\al}(t)}{t\in \R}$ while the parameter $\al$ governs the tail heaviness of its finite dimensional distributions; throughout our article we assume that the latter distributions are symmetric, that $H>1/\al$ and that $H$ is known. We show that, on the interval $[0,1]$, the asymptotic behaviour of the maximum, at a given scale $j$, of absolute values of the wavelet coefficients of ${X{H,\al}(t)}_{t\in \R}$, is of the same order as $2{-j(H-1/\al)}$; then we derive from this result a strongly consistent (i.e. almost surely convergent) statistical estimator for the parameter $\al$.

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