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On the $Φ$-variation of stochastic processes with exponential moments (1507.00605v1)

Published 2 Jul 2015 in math.PR

Abstract: We obtain sharp sufficient conditions for exponentially integrable stochastic processes $X={X(t)!!: t\in [0,1]}$, to have sample paths with bounded $\Phi$-variation. When $X$ is moreover Gaussian, we also provide a bound of the expectation of the associated $\Phi$-variation norm of $X$. For an Hermite process $X$ of order $m\in \N$ and of Hurst index $H\in (1/2,1)$, we show that $X$ is of bounded $\Phi$-variation where $\Phi(x)=x{1/H}(\log(\log 1/x)){-m/(2H)}$, and that this $\Phi$ is optimal. This shows that in terms of $\Phi$-variation, the Rosenblatt process (corresponding to $m=2$) has more rough sample paths than the fractional Brownian motion (corresponding to $m=1$).

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