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arxiv: 0902.2902 · v1 · submitted 2009-02-17 · 🧮 math.PR

Fractional multiplicative processes

classification 🧮 math.PR
keywords randomweightsvalueswhenalmostbrowniancascadesfractional
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Statistically self-similar measures on $[0,1]$ are limit of multiplicative cascades of random weights distributed on the $b$-adic subintervals of $[0,1]$. These weights are i.i.d, positive, and of expectation $1/b$. We extend these cascades naturally by allowing the random weights to take negative values. This yields martingales taking values in the space of continuous functions on $[0,1]$. Specifically, we consider for each $H\in (0,1)$ the martingale $(B_{n})_{n\geq1}$ obtained when the weights take the values $-b^{-H}$ and $b^{-H}$, in order to get $B_n$ converging almost surely uniformly to a statistically self-similar function $B$ whose H\"{o}lder regularity and fractal properties are comparable with that of the fractional Brownian motion of exponent $H$. This indeed holds when $H\in(1/2,1)$. Also the construction introduces a new kind of law, one that it is stable under random weighted averaging and satisfies the same functional equation as the standard symmetric stable law of index $1/H$. When $H\in(0,1/2]$, to the contrary, $B_n$ diverges almost surely. However, a natural normalization factor $ a_n$ makes the normalized correlated random walk $ B_n / a_n$ converge in law, as $n$ tends to $\infty$, to the restriction to $[0,1]$ of the standard Brownian motion. Limit theorems are also associated with the case $H>1/2$.

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