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The Multiplicative Chaos of $H=0$ Fractional Brownian Fields (2008.01385v1)

Published 4 Aug 2020 in math.PR and q-fin.MF

Abstract: We consider a family of fractional Brownian fields ${B{H}}_{H\in (0,1)}$ on $\mathbb{R}{d}$, where $H$ denotes their Hurst parameter. We first define a rich class of normalizing kernels $\psi$ such that the covariance of $$ X{H}(x) = \Gamma(H){\frac{1}{2}} \left( B{H}(x) - \int_{\mathbb{R}{d}} B{H}(u) \psi(u, x)du\right), $$ converges to the covariance of a log-correlated Gaussian field when $H \downarrow 0$. We then use Berestycki's good points'' approach in order to derive the limiting measure of the so-called multiplicative chaos of the fractional Brownian field $$ M^{H}_\gamma(dx) = e^{\gamma X^{H}(x) - \frac{\gamma^{2}}{2} E[X^{H}(x)^{2}] }dx, $$ as $H\downarrow 0$ for all $\gamma \in (0,\gamma^{*}(d)]$, where $\gamma^{*}(d)>\sqrt{\frac{7}{4}d}$. As a corollary we establish the $L^{2}$ convergence of $M^{H}_\gamma$ over the sets ofgood points'', where the field $XH$ has a typical behaviour. As a by-product of the convergence result, we prove that for log-normal rough volatility models with small Hurst parameter, the volatility process is supported on the sets of ``good points'' with probability close to $1$. Moreover, on these sets the volatility converges in $L2$ to the volatility of multifractal random walks.

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