Statistical analysis and first-passage-time applications of a lognormal diffusion process with multi-sigmoidal logistic mean
Metadatos
Afficher la notice complèteEditorial
Springer
Materia
Lognormal diffusion process Multi-sigmoidal growth Maximum likelihood estimation Asymptotic distribution First-passage-time First-passage-time location function
Date
2022-08-27Referencia bibliográfica
Di Crescenzo, A... [et al.]. Statistical analysis and first-passage-time applications of a lognormal diffusion process with multi-sigmoidal logistic mean. Stat Papers (2022). [https://doi.org/10.1007/s00362-022-01349-1]
Patrocinador
Universita degli Studi di Salerno within the CRUI-CARE AgreementRésumé
We consider a lognormal diffusion process having a multisigmoidal logistic mean,
useful to model the evolution of a population which reaches the maximum level of
the growth after many stages. Referring to the problem of statistical inference, two
procedures to find the maximum likelihood estimates of the unknown parameters
are described. One is based on the resolution of the system of the critical points
of the likelihood function, and the other is on the maximization of the likelihood
function with the simulated annealing algorithm. A simulation study to validate the
described strategies for finding the estimates is also presented, with a real application
to epidemiological data. Special attention is also devoted to the first-passage-time
problem of the considered diffusion process through a fixed boundary.