Implements the EM algorithm for a parameterized Gaussian mixture model, starting with the expectation step.
emE(data, parameters, prior = NULL, control = emControl(), warn = NULL, ...)
emV(data, parameters, prior = NULL, control = emControl(), warn = NULL, ...)
emX(data, prior = NULL, warn = NULL, ...)
emEII(data, parameters, prior = NULL, control = emControl(), warn = NULL, ...)
emVII(data, parameters, prior = NULL, control = emControl(), warn = NULL, ...)
emEEI(data, parameters, prior = NULL, control = emControl(), warn = NULL, ...)
emVEI(data, parameters, prior = NULL, control = emControl(), warn = NULL, ...)
emEVI(data, parameters, prior = NULL, control = emControl(), warn = NULL, ...)
emVVI(data, parameters, prior = NULL, control = emControl(), warn = NULL, ...)
emEEE(data, parameters, prior = NULL, control = emControl(), warn = NULL, ...)
emVEE(data, parameters, prior = NULL, control = emControl(), warn = NULL, ...)
emEVE(data, parameters, prior = NULL, control = emControl(), warn = NULL, ...)
emVVE(data, parameters, prior = NULL, control = emControl(), warn = NULL, ...)
emEEV(data, parameters, prior = NULL, control = emControl(), warn = NULL, ...)
emVEV(data, parameters, prior = NULL, control = emControl(), warn = NULL, ...)
emEVV(data, parameters, prior = NULL, control = emControl(), warn = NULL, ...)
emVVV(data, parameters, prior = NULL, control = emControl(), warn = NULL, ...)
emXII(data, prior = NULL, warn = NULL, ...)
emXXI(data, prior = NULL, warn = NULL, ...)
emXXX(data, prior = NULL, warn = NULL, ...)
A list including the following components:
A character string identifying the model (same as the input argument).
A matrix whose [i,k]
th entry is the
conditional probability of the ith observation belonging to
the kth component of the mixture.
pro
A vector whose kth component is the mixing proportion for the kth component of the mixture model. If the model includes a Poisson term for noise, there should be one more mixing proportion than the number of Gaussian components.
mean
The mean for each component. If there is more than one component, this is a matrix whose kth column is the mean of the kth component of the mixture model.
variance
A list of variance parameters for the model.
The components of this list depend on the model
specification. See the help file for mclustVariance
for details.
Vinv
The estimate of the reciprocal hypervolume of the data region used in the computation when the input indicates the addition of a noise component to the model.
The log likelihood for the data in the mixture model.
"info"
Information on the iteration.
"WARNING"
An appropriate warning if problems are
encountered in the computations.
A numeric vector, matrix, or data frame of observations. Categorical variables are not allowed. If a matrix or data frame, rows correspond to observations and columns correspond to variables.
The parameters of the model:
pro
Mixing proportions for the components of the mixture. There should one more mixing proportion than the number of Gaussian components if the mixture model includes a Poisson noise term.
mean
The mean for each component. If there is more than one component, this is a matrix whose kth column is the mean of the kth component of the mixture model.
variance
A list of variance parameters for the model.
The components of this list depend on the model
specification. See the help file for mclustVariance
for details.
Vinv
An estimate of the reciprocal hypervolume of the data region.
The default is determined by applying function hypvol
to the data. Used only when pro
includes an additional
mixing proportion for a noise component.
The default assumes no prior, but this argument allows specification of a
conjugate prior on the means and variances through the function
priorControl
.
A list of control parameters for EM. The defaults are set by the call
emControl()
.
A logical value indicating whether or not a warning should be issued
whenever a singularity is encountered.
The default is given in mclust.options("warn")
.
Catches unused arguments in indirect or list calls via do.call
.
me
,
mstep
,
mclustVariance
,
mclust.options
.
# \donttest{
msEst <- mstepEEE(data = iris[,-5], z = unmap(iris[,5]))
names(msEst)
emEEE(data = iris[,-5], parameters = msEst$parameters)# }
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