plot {VarSelLCM} | R Documentation |
Plots of an instance of VSLCMresults
Description
This function proposes different plots of an instance of VSLCMresults
.
It permits to visualize:
the discriminative power of the variables (type="bar" or type="pie"). The larger is the discriminative power of a variable, the more explained are the clusters by this variable.
the probabilities of misclassification (type="probs-overall" or type="probs-class").
the distribution of a signle variable (y is the name of the variable and type="boxplot" or type="cdf").
Usage
## S4 method for signature 'VSLCMresults,character'
plot(x, y, type = "boxplot", ylim = c(1,
x@data@d))
Arguments
x |
instance of |
y |
character. The name of the variable to ploted (only used if type="boxplot" or type="cdf"). |
type |
character. The type of plot ("bar": barplot of the disciminative power, "pie": pie of the discriminative power, "probs-overall": histogram of the probabilities of misclassification, "probs-class": histogram of the probabilities of misclassification per cluster, "boxplot": boxplot of a single variable per cluster, "cdf": distribution of a single variable per cluster). |
ylim |
numeric. Define the range of the most discriminative variables to considered (only use if type="pie" or type="bar") |
Examples
## Not run:
require(VarSelLCM)
# Data loading:
# x contains the observed variables
# z the known statu (i.e. 1: absence and 2: presence of heart disease)
data(heart)
ztrue <- heart[,"Class"]
x <- heart[,-13]
# Cluster analysis with variable selection (with parallelisation)
res_with <- VarSelCluster(x, 2, nbcores = 2, initModel=40)
# Summary of the probabilities of missclassification
plot(res_with, type="probs-class")
# Discriminative power of the variables (here, the most discriminative variable is MaxHeartRate)
plot(res_with)
# Boxplot for the continuous variable MaxHeartRate
plot(res_with, y="MaxHeartRate")
# Empirical and theoretical distributions (to check that the distribution is well-fitted)
plot(res_with, y="MaxHeartRate", type="cdf")
# Summary of categorical variable
plot(res_with, y="Sex")
## End(Not run)