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Multifractal analysis for the occupation measure of stable-like processes
Author(s) -
Stéphane Seuret,
Xiaochuan Yang
Publication year - 2017
Publication title -
electronic journal of probability
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.666
H-Index - 53
ISSN - 1083-6489
DOI - 10.1214/17-ejp48
Subject(s) - multifractal system , mathematics , measure (data warehouse) , point process , random measure , hausdorff measure , spectrum (functional analysis) , jump , fractal , markov chain , class (philosophy) , statistical physics , combinatorics , hausdorff dimension , pure mathematics , probability measure , mathematical analysis , statistics , artificial intelligence , physics , database , quantum mechanics , computer science
In this article, we investigate the local behaviors of the occupation measure $\mu$ of a class of real-valued Markov processes M, defined via a SDE. This (random) measure describes the time spent in each set A $\subset$ R by the sample paths of M. We compute the multifractal spectrum of $\mu$, which turns out to be random, depending on the trajec-tory. This remarkable property is in sharp contrast with the results previously obtained on occupation measures of other processes (such as L{\'e}vy processes), since the multifractal spectrum is usually determinis-tic, almost surely. In addition, the shape of this multifractal spectrum is very original, reflecting the richness and variety of the local behaviors. The proof is based on new methods, which lead for instance to fine estimates on Hausdorff dimensions of certain jump configurations in Poisson point processes.

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