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Version 0.6.2 ( master branch )

This package provides a ggplot2 implementation of the biplot, a simultaneous plot of scores for observations and vectors for variables for principal component-like analyses.
The package provides two main functions: ggscreeplot() and ggbiplot().

ggbiplot aims to be a drop-in replacement for the standard R function stats::biplot() with extended functionality for labeling groups, drawing a correlation circle, and adding data ellipsoids. It also supports PCA-like objects calculated by FactoMineR::PCA(), ade4::dudi.pca() and MASS::lda().

The package was originally developed by Vince Vu at https://github.com/vqv/ggbiplot. That development was supported in part by NSF Postdoctoral Fellowship DMS-0903120 from 2009-2012. The current version, now on CRAN, will be the locus of further development.

Installation

You can install the latest CRAN version, or install from GitHub as shown below.

CRAN version install.packages("ggbiplot")
GitHub master remotes::install_github("friendly/ggbiplot")

Examples

Load packages:

Crime data

The crime data gives rates of various serious crimes in each of the 50 U. S. states, originally from the United States Statistical Abstracts (1970).

Let’s take a quick look at the correlations among these, using corrplot::corrplot() and showing each correlation by an ellipse whose eccentricity and shading represents the value of the correlation.

data(crime)
crime |> 
  dplyr::select(where(is.numeric)) |> 
  cor() |> 
  corrplot(method = "ellipse", tl.srt = 0)

The correlations are all positive. Note also that the variables in the dataset are ordered in seriousness or violence, ranging from murder to auto theft.

Carry out a PCA:

crime.pca <- 
  crime |> 
  dplyr::select(where(is.numeric)) |>
  prcomp(scale. = TRUE)

crime.pca
#> Standard deviations (1, .., p=7):
#> [1] 2.029 1.113 0.852 0.563 0.508 0.471 0.352
#> 
#> Rotation (n x k) = (7 x 7):
#>             PC1     PC2     PC3     PC4     PC5     PC6     PC7
#> murder   -0.300 -0.6292 -0.1782  0.2321  0.5381  0.2591  0.2676
#> rape     -0.432 -0.1694  0.2442 -0.0622  0.1885 -0.7733 -0.2965
#> robbery  -0.397  0.0422 -0.4959  0.5580 -0.5200 -0.1144 -0.0039
#> assault  -0.397 -0.3435  0.0695 -0.6298 -0.5067  0.1724  0.1917
#> burglary -0.440  0.2033  0.2099  0.0576  0.1010  0.5360 -0.6481
#> larceny  -0.357  0.4023  0.5392  0.2349  0.0301  0.0394  0.6017
#> auto     -0.295  0.5024 -0.5684 -0.4192  0.3698 -0.0573  0.1470

The biplot, using default scaling (standardized components), and labeling the states by their state abbreviation:

ggbiplot(crime.pca,
         labels = crime$st ,
         circle = TRUE,
         varname.size = 4,
         varname.color = "red") 

The directions of the principal components are arbitrary; we are free to reflect the variable vectors and component scores to facilitate interpretation. Also, there seem to be differences among regions of the U.S., which can be visualized using data ellipses for the component scores. The groups argument allows the observations to colored by group and to summarized by groups.

crime.pca <- reflect(crime.pca)
ggbiplot(crime.pca,
         groups = crime$region,
         labels = crime$st,
         labels.size = 4,
         var.factor = 1.4,
         ellipse = TRUE, ellipse.level = 0.5, ellipse.alpha = 0.1,
         circle = TRUE,
         varname.size = 4,
         varname.color = "black") +
  labs(fill = "Region", color = "Region") +
  theme(legend.direction = 'horizontal', legend.position = 'top')

The interpretation of the data is now clear.

  • The first dimension, accounting for 58.8% of variance, can be seen to represent overall crime rate, with Nevada (NV) at the high end and North Dakota (ND), South Dakota (SD) and West Virginia (WV) at the low end.

  • The second dimension, accounting for 17.7% of variance represents a contrast between personal crime vs. property crime. On this dimension, Massachusetts (MA), Rhode Island (RI) are opposed to Mississippi (MS), Alabama (AL), Louisiana (LA) and South Carolina (SC).

  • The regions are represented by the differences in the centers of the data ellipses for the scores. Southern states are highest on murder, assault and rape, while the Northeast states are highest on auto theft and larceny.

  • In this standardized view, the angles between variable vectors approximate the correlations among the variables, according to cos (angle) ≈ r. Thus, murder and auto, nearly 90o reflect a near 0 correlation.

Wine data

The wine data contains results of a chemical analysis of wines grown in the same region in Italy, derived from three different cultivars. The analysis determined the quantities of 13 chemical constituents found in each of the three types of wines. The grape varieties (cultivars), barolo, barbera, and grignolino, are given in wine.class.

What can we understand about the differences among these wines from a biplot?

data(wine)
wine.pca <- prcomp(wine, scale. = TRUE)
ggscreeplot(wine.pca) 

Hmm. The screeplot shows that more than two dimensions are necessary to account for most of the variance.

Plot the first two PCA dimensions, accounting for 55% of the variance.

ggbiplot(wine.pca, 
  obs.scale = 1, var.scale = 1,
  groups = wine.class, 
  varname.size = 4,
  ellipse = TRUE, 
  circle = TRUE) +
  labs(fill = "Cultivar", color = "Cultivar") +
  theme(legend.direction = 'horizontal', legend.position = 'top')

The three cultivars are arranged along the first dimension, in the order barolo < grignolino < barbera. These are distinguished largely by a contrast between (Phenols, Flav) vs. (NonFlavPhenols, AlcAsh). The second dimension is represented by the cluster of variables Mg, Alcohol, Ash, Color, which distinguishes grignolino from the other two.

Iris data

The classic iris data is widely used for examples of multivariate analysis and biplots, so let’s use it here.

data(iris)
iris.pca <- prcomp (~ Sepal.Length + Sepal.Width + Petal.Length + Petal.Width,
                    data=iris,
                    scale. = TRUE)
summary(iris.pca)
#> Importance of components:
#>                         PC1   PC2    PC3     PC4
#> Standard deviation     1.71 0.956 0.3831 0.14393
#> Proportion of Variance 0.73 0.229 0.0367 0.00518
#> Cumulative Proportion  0.73 0.958 0.9948 1.00000

Plot the first two dimensions:

iris.gg <-
ggbiplot(iris.pca, obs.scale = 1, var.scale = 1,
         groups = iris$Species, point.size=2,
         varname.size = 5, 
         varname.color = "black",
         varname.adjust = 1.2,
         ellipse = TRUE, 
         circle = TRUE) +
  labs(fill = "Species", color = "Species") +
  theme_minimal(base_size = 14) +
  theme(legend.direction = 'horizontal', legend.position = 'top')

iris.gg

It is possible to add annotations to the biplot by making use of the fact that ggplot() returns a lot of information in the "gg" object. In particular, the $data component contains the scores on the principal components that are plotted as points here. Here we add direct labels for the groups and suppress the legend.

# get means of coordinates by group
group.labs <-
  iris.gg$data |>
  summarise(xvar = mean(xvar),
            yvar = mean(yvar), .by = groups)

group.labs
#>       groups   xvar   yvar
#> 1     setosa -2.217 -0.288
#> 2 versicolor  0.495  0.548
#> 3  virginica  1.723 -0.260

Now, just use geom_label to draw labels for the groups.

iris.gg + geom_label(data = group.labs,
                     aes(x = xvar, y=yvar, label=groups),
                     size = 5) +
  theme(legend.position = "none")