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arxiv: 1901.09303 · v3 · pith:A34X4DG3new · submitted 2019-01-27 · 🧮 math.ST · stat.TH

Asymptotics of maximum likelihood estimation for stable law with continuous parameterization

classification 🧮 math.ST stat.TH
keywords alphaasymptoticsbetacontinuousparameterizationestimationgapslikelihood
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Asymptotics of maximum likelihood estimation for $\alpha$-stable law are analytically investigated with a continuous parameterization. The consistency and asymptotic normality are shown on the interior of the whole parameter space. Although these asymptotics have been provided with Zolotarev's $(B)$ parameterization, there are several gaps between. Especially in the latter, the density, so that scores and their derivatives are discontinuous at $\alpha=1$ for $\beta\neq 0$ and usual asymptotics are impossible. This is considerable inconvenience for applications. By showing that these quantities are smooth in the continuous form, we fill gaps between and provide a convenient theory. We numerically approximate the Fisher information matrix around the Cauchy law $(\alpha,\beta)=(1,0)$. The results exhibit continuity at $\alpha=1,\,\beta\neq 0$ and this secures the accuracy of our calculations.

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