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Estimating the logarithm of characteristic function and stability parameter for symmetric stable laws

Methodology and Computing in Applied Probability (MCAP), 2020
Abstract

Let X1,,XnX_1,\ldots,X_n be an i.i.d. sample from symmetric stable distribution with stability parameter α\alpha and scale parameter γ\gamma. Let φn\varphi_n be the empirical characteristic function. We prove an uniform large deviation inequality: given preciseness ϵ>0\epsilon>0 and probability p(0,1)p\in (0,1), there exists universal (depending on ϵ\epsilon and pp but not depending on α\alpha and γ\gamma) constant rˉ>0\bar{r}>0 so that P(supu>0:r(u)rˉr(u)r^(u)ϵ)p,P\big(\sup_{u>0:r(u)\leq \bar{r}}|r(u)-\hat{r}(u)|\geq \epsilon\big)\leq p, where r(u)=(uγ)αr(u)=(u\gamma)^{\alpha} and r^(u)=lnφn(u)\hat{r}(u)=-\ln|\varphi_n(u)|. As an applications of the result, we show how it can be used in estimation unknown stability parameter α\alpha.

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