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You're reading from  R Statistics Cookbook

Product typeBook
Published inMar 2019
Reading LevelExpert
PublisherPackt
ISBN-139781789802566
Edition1st Edition
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Francisco Juretig
Francisco Juretig
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Francisco Juretig

Francisco Juretig has worked for over a decade in a variety of industries such as retail, gambling and finance deploying data-science solutions. He has written several R packages, and is a frequent contributor to the open source community.
Read more about Francisco Juretig

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Mixed generalized linear models

Generalized linear models are a set of techniques that generalizes the linear regression model (which assumes that the dependent variable is Gaussian) into a wide variety of distributions for the response variable. This response can no longer be Gaussian, but can belong to any distribution that is part of the so-called exponential family. In fact, there are many distributions that fall into this category, such as the binomial, gamma, Poisson, or negative binomial distributions. This fact allows us to work with a wide array of situations, such as with count data, or binary responses, and so on.

Generalized linear models (referred to as GLMs in the literature) are defined by three things: first, a linear predictor that relates the covariates with the response variable; second, a probability distribution for the dependent variable from the exponential...

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R Statistics Cookbook
Published in: Mar 2019Publisher: PacktISBN-13: 9781789802566

Author (1)

author image
Francisco Juretig

Francisco Juretig has worked for over a decade in a variety of industries such as retail, gambling and finance deploying data-science solutions. He has written several R packages, and is a frequent contributor to the open source community.
Read more about Francisco Juretig