Unimodal maps perturbed by heteroscedastic noise: an application to a financial systems

Lillo, F., Livieri, G.ORCID logo, Marmi, S., Solomko, A. & Vaienti, S. (2023). Unimodal maps perturbed by heteroscedastic noise: an application to a financial systems. Journal of Statistical Physics, 190(10). https://doi.org/10.1007/s10955-023-03160-0
Copy

We investigate and prove the mathematical properties of a general class of one-dimensional unimodal smooth maps perturbed with a heteroscedastic noise. Specifically, we investigate the stability of the associated Markov chain, show the weak convergence of the unique stationary measure to the invariant measure of the map, and show that the average Lyapunov exponent depends continuously on the Markov chain parameters. Representing the Markov chain in terms of random transformation enables us to state and prove the Central Limit Theorem, the large deviation principle, and the Berry-Esséen inequality. We perform a multifractal analysis for the invariant and the stationary measures, and we prove Gumbel’s law for the Markov chain with an extreme index equal to 1.

picture_as_pdf

subject
Published Version
Creative Commons: Attribution 4.0

Download

Export as

EndNote BibTeX Reference Manager Refer Atom Dublin Core JSON Multiline CSV
Export