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missMDA (version 1.7.1)

plot.MIPCA: Plot the graphs for the Multiple Imputation in PCA

Description

From the multiple imputed datasets, the function plots graphs for the individuals, variables and dimensions for the Principal Component Analysis (PCA)

Usage

## S3 method for class 'MIPCA':
plot(x, choice = "all", axes = c(1, 2), new.plot = TRUE, 
   main = NULL, level.conf = 0.95, ...)

Arguments

x
an object of class MIPCA
choice
the graph(s) to plot. By default "all" the graphs are plotted. "ind.proc" the procrustean representation of the individuals, "dim" the representation of the dimensions of the PCA, "ind.supp" the projection of the individuals as supplementary individuals,
axes
a length 2 vector specifying the components to plot
new.plot
boolean, if TRUE, a new graphical device is created
main
string corresponding to the title of the graph you draw (by default NULL and a title is chosen)
level.conf
confidence level used to construct the ellipses. By default, 0.95
...
further arguments passed to or from other methods

Value

  • Four graphs can be drawn:
  • ind.suppThe individuals of the imputed datasets are projected as supplementary individuals onto the reference PCA map; then confidence ellipses are drawn
  • varThe variables of the imputed datasets are projected as supplementary variables onto the reference PCA map
  • ind.procA PCA is performed on each imputed dataset and each configuration of scores is rotated onto the reference PCA map with procrustes rotation; then confidence ellipses are drawn
  • dimThe dimensions of each imputed dataset are projected as supplementary variables onto the dimensions of the reference PCA dimensions

Details

Plots the multiple imputed datasets obtained by the function MIPCA. The idea is to represent the multiple imputed dataset on a reference configuration (the map obtained from the PCA on the incomplete dataset). Different ways are available to take into account and visualize the supplement variability due to missing values.

References

Josse, J., Husson, F. (2010). Multiple Imputation in PCA

See Also

MIPCA,imputePCA

Examples

Run this code
data(orange)
## nb <- estim_ncpPCA(orange,ncp.max=5) ## Time consuming, nb = 2
resMI <- MIPCA(orange,ncp=2)
plot(resMI)

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