An introduction to generalized linear models ,4th edition by Annette Dobson, Adrian Barnett PDF free download

Annette Dobson, Adrian Barnett An introduction to generalized linear models ,4th edition PDF, was published in 2018 and uploaded for 300-level Science and Technology students of University of Ibadan (UI), offering STA351 course. This ebook can be downloaded for FREE online on this page.

An introduction to generalized linear models ,4th edition ebook can be used to learn generalized linear models, Model Fitting, Exponential Family, estimation, inference, normal linear models, Binary Variables, Logistic Regression, Nominal Logistic Regression, Ordinal Logistic Regression, Poisson Regression, Log-Linear Models, Survival Analysis, Clustered data, Longitudinal Data, Bayesian Analysis, Markov Chain Monte Carlo Methods.

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