Clustering longitudinal data using the likelihood as a metric of distance


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Documentation for package ‘kmlcov’ version 1.0.1

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kmlcov-package Clustering longitudinal data using the likelihood as a metric of distance
addIndic Create the new formula with the indicator covariates
affect_rand Affect randomly the individuals to the clusters
alias Class '"Converge"'
artifdata Artificial data
Converge-class Class '"Converge"'
getNomCoef Get the name of the coefficients in the 'glm' object according to the current cluster
glmClust Clustering longitudinal data
GlmCluster Class 'GlmCluster'
GlmCluster-class Class 'GlmCluster'
kmlCov Clustering longitudinal data from different starting conditions
kmlcov Clustering longitudinal data using the likelihood as a metric of distance
KmlCovList Class 'KmlCovList'
KmlCovList-class Class 'KmlCovList'
log_lik Calculate the log-likelihood
majIndica Calculate an indicator vector
plot-method Plot the main trajectories
plot-method Plot the main trajectories
predict_clust Creates a character string expression to calculate the predicted values
rwFormula Rewrite the formula with all the covariates
seperateFormula Separate the covariates in a formula
show-method Method for function 'show'
which_best Seek the best partitions