Uniformly and strongly consistent estimation for the Hurst function of a Linear Multifractional Stable Motion
Antoine Ayache, Julien Hamonier

TL;DR
This paper introduces a new method for consistently estimating the Hurst function of Linear Multifractional Stable Motion, overcoming dependence challenges and achieving uniform convergence and rate estimates.
Contribution
It proposes a novel strategy that does not rely on covariance estimates, enabling strong uniform and H"older norm consistency for the Hurst function estimation.
Findings
Achieves almost sure and L^p consistency of the estimator.
Provides convergence rates for the estimator.
Establishes uniform and H"older norm convergence results.
Abstract
Since the middle of the 90's, multifractional processes have been introduced for overcoming some limitations of the classical Fractional Brownian Motion model. In their context, the Hurst parameter becomes a Holder continuous function H(?) of the time variable t. Linear Multifractional Stable Motion (LMSM) is the most known one of them with heavy-tailed distributions. Generally speaking, global and local sample path roughness of a multifractional process are determined by values of its parameter ; therefore, since about two decades, several authors have been interested in their statistical estimation, starting from discrete variations of the process. Because of complex dependence structures of variations, in order to show consistency of estimators one has to face challenging problems. The main goal of our article is to introduce, in the setting of the symmetric alpha-stable…
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Taxonomy
TopicsFinancial Risk and Volatility Modeling · Stochastic processes and financial applications · Complex Systems and Time Series Analysis
