Inference of the generalized-growth model via maximum likelihood estimation: A reflection on the impact of overdispersion

Volume: 484, Pages: 110029 - 110029
Published: Jan 1, 2020
Abstract
Recently, the generalized-growth model was introduced as a flexible approach to characterize growth dynamics of disease outbreaks during the early ascending phase. In this work, by using classical maximum likelihood estimation to obtain parameter estimates, we evaluate the impact of varying levels of overdispersion on the inference of the growth scaling parameter through comparing Poisson and Negative binomial models. In particular, under...
Paper Details
Title
Inference of the generalized-growth model via maximum likelihood estimation: A reflection on the impact of overdispersion
Published Date
Jan 1, 2020
Volume
484
Pages
110029 - 110029
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