Multinomial Mixed Effects Models


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Documentation for package ‘mme’ version 0.1-6

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mme-package Multinomial Mixed Effects Models
addtolist Add items from a list
addtomatrix Add rows from a matrix
ci Standard deviation and p-values of the estimated model parameters
data.mme Function to generate matrices and the initial values
Fbetaf Inverse of the Fisher information matrix of the fixed and random effects in Model 1
Fbetaf.ct Inverse of the Fisher information matrix of fixed and random effects in Model 3
Fbetaf.it The inverse of the Fisher information matrix of the fixed and random effects for Model 2
initial.values Initial values for fitting algorithm to estimate the fixed and random effects and the variance components
mme Multinomial Mixed Effects Models
mmedata Create objects of class mmedata
model Choose between the three models
modelfit1 Function used to fit Model 1
modelfit2 Function to fit Model 2
modelfit3 Function used to fit Model 3
mseb Bias and MSE using parametric bootstrap
msef Analytic MSE for Model 1
msef.ct Analytic MSE for Model 3
msef.it Analytic MSE for Model 2
omega Model correlation matrix for Model 3
phi.direct Variance components for Model 1
phi.direct.ct Variance components for Model 3
phi.direct.it Variance components for Model 2
phi.mult Initial values for the variance components for Model 1
phi.mult.ct Initial values for the variance components in Model 3
phi.mult.it Initial values for the variance components in Model 2
print.mme Print objects of class mme
prmu Estimated mean and probabilities for Model 1
prmu.time Estimated mean and probabilities for Model 2 and 3
simdata Dataset for Model 1
simdata2 Dataset for Model 2
simdata3 Dataset for Model 3
sPhikf Fisher information matrix and score vectors of the variance components for Model 1
sPhikf.ct Fisher information matrix and score vectors of the variance components for Model 3
sPhikf.it Fisher information matrix and score vectors of the variance components for Model 2
wmatrix Model variance-covariance matrix of the multinomial mixed models