Artigo em revista científica Q1
Likelihood function through the delta approximation in mixed SDE models
Nelson T. Jamba (Jamba, N.T.); Gonçalo João Costa Jacinto (Jacinto, G.); Patrícia A. Filipe (Filipe, P. A.); Carlos Alberto dos Santos Braumann (Braumann, C. A.);
Título Revista
Mathematics
Ano (publicação definitiva)
2022
Língua
Inglês
País
Suíça
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Abstract/Resumo
Stochastic differential equations (SDE) appropriately describe a variety of phenomena occurring in random environments, such as the growth dynamics of individual animals. Using appropriate weight transformations and a variant of the Ornstein–Uhlenbeck model, one obtains a general model for the evolution of cattle weight. The model parameters are ?, the average transformed weight at maturity, ?, a growth parameter, and ?, a measure of environmental fluctuations intensity. We briefly review our previous work on estimation and prediction issues for this model and some generalizations, considering fixed parameters. In order to incorporate individual characteristics of the animals, we now consider that the parameters ? and ? are Gaussian random variables varying from animal to animal, which results in SDE mixed models. We estimate parameters by maximum likelihood, but, since a closed-form expression for the likelihood function is usually not possible, we approximate it using our proposed delta approximation method. Using simulated data, we estimate the model parameters and compare them with existing methodologies, showing that the proposed method is a good alternative. It also overcomes the existing methodologies requirement of having all animals weighed at the same ages; thus, we apply it to real data, where such a requirement fails.
Agradecimentos/Acknowledgements
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Palavras-chave
Delta approximation,Maximum likelihood estimation method,Mixed models,Stochastic differential equations
  • Matemáticas - Ciências Naturais
Registos de financiamentos
Referência de financiamento Entidade Financiadora
PDR2020-1.0.1-FEADER-031130 Comissão Europeia
UID/04674/2020 Fundação para a Ciência e a Tecnologia