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latrend (version 1.1.0)

interface-crimCV: crimCV interface

Description

crimCV interface

Usage

# S4 method for lcMethodCrimCV
getName(object)

# S4 method for lcMethodCrimCV getShortName(object)

# S4 method for lcMethodCrimCV prepareData(method, data, verbose, ...)

# S4 method for lcMethodCrimCV fit(method, data, envir, verbose, ...)

# S4 method for lcModelCrimCV predictForCluster(object, newdata, cluster, what = "mu", ...)

# S4 method for lcModelCrimCV postprob(object)

# S3 method for lcModelCrimCV logLik(object, ...)

# S3 method for lcModelCrimCV coef(object, ...)

# S4 method for lcModelCrimCV converged(object)

Arguments

object

The object to extract the label from.

method

The lcMethod object.

data

The data, as a data.frame, on which the model will be trained.

verbose

A R.utils::Verbose object indicating the level of verbosity.

...

Additional arguments.

envir

The environment in which the lcMethod should be evaluated

newdata

Optional data.frame for which to compute the model predictions. If omitted, the model training data is used. Cluster trajectory predictions are made when ids are not specified.

cluster

The cluster name (as character) to predict for.

what

The distributional parameter to predict. By default, the mean response 'mu' is predicted. The cluster membership predictions can be obtained by specifying what = 'mb'.

See Also

lcMethodCrimCV crimCV