summary.mclustDAtest {mclust}R Documentation

Classification and posterior probability from mclustDAtest.

Description

Extract classifications and the corresponding posterior probabilities from mclustDAtest.

Usage

## S3 method for class 'mclustDAtest'
summary(object, pro=NULL, ...)

Arguments

object

The output of mclustDAtest.

pro

Optional prior probabilities for each class in the training data.

...

Not used. For generic/method consistency.

Value

A list with the following two components:

classfication

The classification from mclustDAtest.

z

Matrix of posterior probabilities in which the [i,j]th entry is the probability of observation i belonging to class j.

References

C. Fraley and A. E. Raftery (2002). Model-based clustering, discriminant analysis, and density estimation. Journal of the American Statistical Association 97:611-631.

C. Fraley and A. E. Raftery (2006). MCLUST Version 3 for R: Normal Mixture Modeling and Model-Based Clustering, Technical Report no. 504, Department of Statistics, University of Washington.

See Also

classError, mclustDAtest

Examples

odd <- seq(1, nrow(cross), by = 2)
train <- mclustDAtrain(cross[odd,-1], labels = cross[odd,1]) ## training step
summary(train)

even <- odd + 1
test <- mclustDAtest(cross[even,-1], train) ## compute model densities
testSummary <- summary(test) 
names(testSummary)
classError(testSummary$classification,cross[even,1])

[Package mclust version 3.4.11 Index]