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repeated (version 1.1.9)

Non-Normal Repeated Measurements Models

Description

Various functions to fit models for non-normal repeated measurements, such as Binary Random Effects Models with Two Levels of Nesting, Bivariate Beta-binomial Regression Models, Marginal Bivariate Binomial Regression Models, Cormack capture-recapture models, Continuous-time Hidden Markov Chain Models, Discrete-time Hidden Markov Chain Models, Changepoint Location Models using a Continuous-time Two-state Hidden Markov Chain, generalized nonlinear autoregression models, multivariate Gaussian copula models, generalized non-linear mixed models with one random effect, generalized non-linear mixed models using h-likelihood for one random effect, Repeated Measurements Models for Counts with Frailty or Serial Dependence, Repeated Measurements Models for Continuous Variables with Frailty or Serial Dependence, Ordinal Random Effects Models with Dropouts, marginal homogeneity models for square contingency tables, correlated negative binomial models with Kalman update. References include Lindsey's text books, JK Lindsey (2001) and JK Lindsey (1999) .

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Version

Install

install.packages('repeated')

Monthly Downloads

662

Version

1.1.9

License

GPL (>= 2)

Maintainer

Last Published

September 20th, 2024

Functions in repeated (1.1.9)

biv.betab

Bivariate Beta-binomial Regression Models
binnest

Binary Random Effects Models with Two Levels of Nesting
kalcount

Repeated Measurements Models for Counts with Frailty or Serial Dependence
hnlmix

Generalized Nonlinear Regression using h-likelihood for a Random Parameter
gnlmm

Generalized Nonlinear Mixed Models
chidden

Continuous-time Hidden Markov Chain Models
gnlmix

Generalized Nonlinear Regression with a Random Parameter
marg.hom

Marginal Homogeneity Models
hidden

Discrete-time Hidden Markov Chain Models
kalseries

Repeated Measurements Models for Continuous Variables with Frailty or Serial Dependence
gnlmm3

Generalized Nonlinear Mixed Models for Three-parameter Distributions
capture

Capture-recapture Models
nbkal

Negative Binomial Models with Kalman Update
biv.binom

Marginal Bivariate Binomial Regression Models
gausscop

Multivariate Gaussian Copula with Arbitrary Marginals
glmm

Generalized Linear Mixed Models
cphidden

Changepoint Location using a Continuous-time Two-state Hidden Markov Chain
catmiss

Marginal Probabilities for Categorical Repeated Measurements with Missing Data
gar

Generalized Autoregression Models