Plotting method for MclustDA discriminant analysis
Plots for model-based mixture discriminant analysis results, such as scatterplot of training and test data, classification of train and test data, and errors.
## S3 method for class 'MclustDA' plot(x, what = c("scatterplot", "classification", "train&test", "error"), newdata, newclass, dimens = NULL, symbols, colors, main = NULL, ...)
x |
An object of class |
what |
A string specifying the type of graph requested. Available choices are:
If not specified, in interactive sessions a menu of choices is proposed. |
newdata |
A data frame or matrix for test data. |
newclass |
A vector giving the class labels for the observations in the test data (if known). |
dimens |
A vector of integers giving the dimensions of the desired coordinate projections for multivariate data. The default is to take all the the available dimensions for plotting. |
symbols |
Either an integer or character vector assigning a plotting symbol to each
unique class. Elements in |
colors |
Either an integer or character vector assigning a color to each
unique class in |
main |
A logical, a character string, or |
... |
further arguments passed to or from other methods. |
For more flexibility in plotting, use mclust1Dplot
,
mclust2Dplot
, surfacePlot
, coordProj
, or
randProj
.
Luca Scrucca
odd <- seq(from = 1, to = nrow(iris), by = 2) even <- odd + 1 X.train <- iris[odd,-5] Class.train <- iris[odd,5] X.test <- iris[even,-5] Class.test <- iris[even,5] # common EEE covariance structure (which is essentially equivalent to linear discriminant analysis) irisMclustDA <- MclustDA(X.train, Class.train, modelType = "EDDA", modelNames = "EEE") summary(irisMclustDA, parameters = TRUE) summary(irisMclustDA, newdata = X.test, newclass = Class.test) # common covariance structure selected by BIC irisMclustDA <- MclustDA(X.train, Class.train, modelType = "EDDA") summary(irisMclustDA, parameters = TRUE) summary(irisMclustDA, newdata = X.test, newclass = Class.test) # general covariance structure selected by BIC irisMclustDA <- MclustDA(X.train, Class.train) summary(irisMclustDA, parameters = TRUE) summary(irisMclustDA, newdata = X.test, newclass = Class.test) plot(irisMclustDA) plot(irisMclustDA, dimens = 3:4) plot(irisMclustDA, dimens = 4) plot(irisMclustDA, what = "classification") plot(irisMclustDA, what = "classification", newdata = X.test) plot(irisMclustDA, what = "classification", dimens = 3:4) plot(irisMclustDA, what = "classification", newdata = X.test, dimens = 3:4) plot(irisMclustDA, what = "classification", dimens = 4) plot(irisMclustDA, what = "classification", dimens = 4, newdata = X.test) plot(irisMclustDA, what = "train&test", newdata = X.test) plot(irisMclustDA, what = "train&test", newdata = X.test, dimens = 3:4) plot(irisMclustDA, what = "train&test", newdata = X.test, dimens = 4) plot(irisMclustDA, what = "error") plot(irisMclustDA, what = "error", dimens = 3:4) plot(irisMclustDA, what = "error", dimens = 4) plot(irisMclustDA, what = "error", newdata = X.test, newclass = Class.test) plot(irisMclustDA, what = "error", newdata = X.test, newclass = Class.test, dimens = 3:4) plot(irisMclustDA, what = "error", newdata = X.test, newclass = Class.test, dimens = 4) # simulated 1D data n <- 250 set.seed(1) triModal <- c(rnorm(n,-5), rnorm(n,0), rnorm(n,5)) triClass <- c(rep(1,n), rep(2,n), rep(3,n)) odd <- seq(from = 1, to = length(triModal), by = 2) even <- odd + 1 triMclustDA <- MclustDA(triModal[odd], triClass[odd]) summary(triMclustDA, parameters = TRUE) summary(triMclustDA, newdata = triModal[even], newclass = triClass[even]) plot(triMclustDA) plot(triMclustDA, what = "classification") plot(triMclustDA, what = "classification", newdata = triModal[even]) plot(triMclustDA, what = "train&test", newdata = triModal[even]) plot(triMclustDA, what = "error") plot(triMclustDA, what = "error", newdata = triModal[even], newclass = triClass[even]) # simulated 2D cross data data(cross) odd <- seq(from = 1, to = nrow(cross), by = 2) even <- odd + 1 crossMclustDA <- MclustDA(cross[odd,-1], cross[odd,1]) summary(crossMclustDA, parameters = TRUE) summary(crossMclustDA, newdata = cross[even,-1], newclass = cross[even,1]) plot(crossMclustDA) plot(crossMclustDA, what = "classification") plot(crossMclustDA, what = "classification", newdata = cross[even,-1]) plot(crossMclustDA, what = "train&test", newdata = cross[even,-1]) plot(crossMclustDA, what = "error") plot(crossMclustDA, what = "error", newdata =cross[even,-1], newclass = cross[even,1])
Please choose more modern alternatives, such as Google Chrome or Mozilla Firefox.