Estimation of stability index for symmetric {\alpha}-stable distribution using quantile conditional variance ratios
Kewin P\k{a}czek, Damian Jelito, Marcin Pitera, Agnieszka, Wy{\l}oma\'nska

TL;DR
This paper introduces a new estimation method for the stability index of symmetric alpha-stable distributions using quantile conditional variance ratios, improving accuracy especially with small samples.
Contribution
The paper proposes a novel estimation algorithm based on quantile conditional variance ratios for symmetric alpha-stable distributions, with demonstrated empirical advantages.
Findings
Method often outperforms existing algorithms.
Statistic captures unique sample characteristics.
Insensitivity to skewness parameter change.
Abstract
The class of -stable distributions is widely used in various applications, especially for modelling heavy-tailed data. Although the -stable distributions have been used in practice for many years, new methods for identification, testing, and estimation are still being refined and new approaches are being proposed. The constant development of new statistical methods is related to the low efficiency of existing algorithms, especially when the underlying sample is small or the underlying distribution is close to Gaussian. In this paper we propose a new estimation algorithm for stability index, for samples from the symmetric -stable distribution. The proposed approach is based on quantile conditional variance ratio. We study the statistical properties of the proposed estimation procedure and show empirically that our methodology often outperforms other commonly used…
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Taxonomy
TopicsStatistical Distribution Estimation and Applications · Financial Risk and Volatility Modeling · Bayesian Methods and Mixture Models
