Ergodicity of the Fisher infinitesimal model with quadratic selection
Metadatos
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Elsevier
Materia
Asymptotic behavior Nonlinear spectral theory Quantitative genetics
Fecha
2024Referencia bibliográfica
V. Calvez, T. Lepoutre and D. Poyato. Ergodicity of the Fisher infinitesimal model with quadratic selection. Nonlinear Analysis 238 (2024) 113392 [https://doi.org/10.1016/j.na.2023.113392]
Patrocinador
European Research Council (ERC) under the European Union’s Horizon 2020 research and innovation program (grant agreement No 865711); European Union’s Horizon Europe research and innovation program under the Marie Sklodowska-Curie grant agreement No 101064402; Partially from the State Research Agency (SRA) of the Spanish Ministry of Science and Innovation and European Regional Development Fund (ERDF), project PID2022-137228OB-I00; Modeling Nature Research Unit, project QUAL21-011Resumen
We study the convergence towards a unique equilibrium distribution of the solutions to a time-discrete model with non-overlapping generations arising in
quantitative genetics. The model describes the dynamics of a phenotypic distribution
with respect to a multi-dimensional trait, which is shaped by selection and
Fisher’s infinitesimal model of sexual reproduction. We extend some previous works
devoted to the time-continuous analogs, that followed a perturbative approach in
the regime of weak selection, by exploiting the contractivity of the infinitesimal
model operator in the Wasserstein metric. Here, we tackle the case of quadratic
selection by a global approach. We establish uniqueness of the equilibrium
distribution and exponential convergence of the renormalized profile. Our technique
relies on an accurate control of the propagation of information across the large
binary trees of ancestors (the pedigree chart), and reveals an ergodicity property,
meaning that the shape of the initial datum is quickly forgotten across generations.
We combine this information with appropriate estimates for the emergence of
Gaussian tails and propagation of quadratic and exponential moments to derive
quantitative convergence rates. Our result can be interpreted as a generalization of
the Krein–Rutman theorem in a genuinely non-linear, and non-monotone setting.