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brglm (version 0.7.2)

Bias Reduction in Binomial-Response Generalized Linear Models

Description

Fit generalized linear models with binomial responses using either an adjusted-score approach to bias reduction or maximum penalized likelihood where penalization is by Jeffreys invariant prior. These procedures return estimates with improved frequentist properties (bias, mean squared error) that are always finite even in cases where the maximum likelihood estimates are infinite (data separation). Fitting takes place by fitting generalized linear models on iteratively updated pseudo-data. The interface is essentially the same as 'glm'. More flexibility is provided by the fact that custom pseudo-data representations can be specified and used for model fitting. Functions are provided for the construction of confidence intervals for the reduced-bias estimates.

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Install

install.packages('brglm')

Monthly Downloads

9,096

Version

0.7.2

License

GPL (>= 2)

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Maintainer

Ioannis Kosmidis

Last Published

April 22nd, 2021

Functions in brglm (0.7.2)

brglm.control

Auxiliary for Controlling BRGLM Fitting
brglm

Bias reduction in Binomial-response GLMs
gethats

Calculates the Leverages for a GLM through a C Routine
lizards

Habitat Preferences of Lizards
glm.control1

Auxiliary for Controlling BRGLM Fitting
confint.brglm

Computes confidence intervals of parameters for bias-reduced estimation
profile.brglm

Calculate profiles for objects of class 'brglm'.
profileObjectives-brglm

Objectives to be profiled
separation.detection

Separation Identification.
modifications

Additive Modifications to the Binomial Responses and Totals for Use within `brglm.fit'
plot.profile.brglm

Plot methods for 'profile.brglm' objects