I wonder if it is possible to plot pca biplot results with ggplot2. Suppose if I want to display the following biplot results with ggplot2

fit <- princomp(USArrests, cor=TRUE)

Any help will be highly appreciated. Thanks

  • 2
    This thread on the ggplot2 mailing list might be a good place to start. – joran Jul 5 '11 at 6:09
  • I'd recommend instead accepting MYaseen208's answer about the ggbiplot package. I had started to tweak crayola's answer (which is great, but unnecessary given the package) to do things already available in ggbiplot (e.g. removing labels). – Max Ghenis Aug 21 '15 at 22:59

Maybe this will help-- it's adapted from code I wrote some time back. It now draws arrows as well.

PCbiplot <- function(PC, x="PC1", y="PC2") {
    # PC being a prcomp object
    data <- data.frame(obsnames=row.names(PC$x), PC$x)
    plot <- ggplot(data, aes_string(x=x, y=y)) + geom_text(alpha=.4, size=3, aes(label=obsnames))
    plot <- plot + geom_hline(aes(0), size=.2) + geom_vline(aes(0), size=.2)
    datapc <- data.frame(varnames=rownames(PC$rotation), PC$rotation)
    mult <- min(
        (max(data[,y]) - min(data[,y])/(max(datapc[,y])-min(datapc[,y]))),
        (max(data[,x]) - min(data[,x])/(max(datapc[,x])-min(datapc[,x])))
    datapc <- transform(datapc,
            v1 = .7 * mult * (get(x)),
            v2 = .7 * mult * (get(y))
    plot <- plot + coord_equal() + geom_text(data=datapc, aes(x=v1, y=v2, label=varnames), size = 5, vjust=1, color="red")
    plot <- plot + geom_segment(data=datapc, aes(x=0, y=0, xend=v1, yend=v2), arrow=arrow(length=unit(0.2,"cm")), alpha=0.75, color="red")

fit <- prcomp(USArrests, scale=T)

You may want to change size of text, as well as transparency and colors, to taste; it would be easy to make them parameters of the function. Note: it occurred to me that this works with prcomp but your example is with princomp. You may, again, need to adapt the code accordingly. Note2: code for geom_segment() is borrowed from the mailing list post linked from comment to OP.

PC biplot

  • I'd like to add names of observations as well as arrows for variables. Any idea? – MYaseen208 Jul 5 '11 at 17:48
  • Done -- hope it helps! – crayola Jul 5 '11 at 18:16
  • 1
    Small update for version 0.9 of ggplot2, you now need to add library("ggplot2") and library("grid") to plot arrows. – Etienne Racine Jun 7 '12 at 19:37
  • 4
    this answer is why i Love R and stackoverflow. I looked at the biplot and thought - theres gotta be a better way to graph this thing. let me check stackoverflow. one click later.... – zach Apr 11 '13 at 15:17
  • 1
    See my answer there re LDA biplots – Tom Wenseleers Aug 12 '15 at 13:22

Here is the simplest way through ggbiplot:

fit <- princomp(USArrests, cor=TRUE)

enter image description here

ggbiplot(fit, labels =  rownames(USArrests))

enter image description here

  • 3
    Since this isn't in CRAN, here's how you get the package: library(devtools); install_github("vqv/ggbiplot"). This is definitely the best answer; I wonder if it might be obscured by the initial ugly biplot? This is what I first saw on a small screen, almost ignored it before scrolling down to ggbiplot. – Max Ghenis Aug 21 '15 at 22:54

If you use the excellent FactoMineR package for pca, you might find this useful for making plots with ggplot2

# Plotting the output of FactoMineR's PCA using ggplot2
# load libraries
# start with a clean slate
# load example data from the FactoMineR package
# compute PCA
res.pca <- PCA(decathlon, quanti.sup = 11:12, quali.sup=13, graph = FALSE)
# extract some parts for plotting
PC1 <- res.pca$ind$coord[,1]
PC2 <- res.pca$ind$coord[,2]
labs <- rownames(res.pca$ind$coord)
PCs <- data.frame(cbind(PC1,PC2))
rownames(PCs) <- labs
# Just showing the individual samples...
ggplot(PCs, aes(PC1,PC2, label=rownames(PCs))) + 
# Now get supplementary categorical variables
cPC1 <- res.pca$quali.sup$coor[,1]
cPC2 <- res.pca$quali.sup$coor[,2]
clabs <- rownames(res.pca$quali.sup$coor)
cPCs <- data.frame(cbind(cPC1,cPC2))
rownames(cPCs) <- clabs
colnames(cPCs) <- colnames(PCs)
# Put samples and categorical variables (ie. grouping
# of samples) all together
p <- ggplot() + opts(aspect.ratio=1) + theme_bw(base_size = 20) 
# no data so there's nothing to plot...
# add on data 
p <- p + geom_text(data=PCs, aes(x=PC1,y=PC2,label=rownames(PCs)), size=4) 
p <- p + geom_text(data=cPCs, aes(x=cPC1,y=cPC2,label=rownames(cPCs)),size=10)
p # show plot with both layers
# clear the plot
# Now extract variables
vPC1 <- res.pca$var$coord[,1]
vPC2 <- res.pca$var$coord[,2]
vlabs <- rownames(res.pca$var$coord)
vPCs <- data.frame(cbind(vPC1,vPC2))
rownames(vPCs) <- vlabs
colnames(vPCs) <- colnames(PCs)
# and plot them
pv <- ggplot() + opts(aspect.ratio=1) + theme_bw(base_size = 20) 
# no data so there's nothing to plot
# put a faint circle there, as is customary
angle <- seq(-pi, pi, length = 50) 
df <- data.frame(x = sin(angle), y = cos(angle)) 
pv <- pv + geom_path(aes(x, y), data = df, colour="grey70") 
# add on arrows and variable labels
pv <- pv + geom_text(data=vPCs, aes(x=vPC1,y=vPC2,label=rownames(vPCs)), size=4) + xlab("PC1") + ylab("PC2")
pv <- pv + geom_segment(data=vPCs, aes(x = 0, y = 0, xend = vPC1*0.9, yend = vPC2*0.9), arrow = arrow(length = unit(1/2, 'picas')), color = "grey30")
pv # show plot 
# clear the plot
# Now put them side by side
# Now they can be saved or exported...
# tidy up by deleting the plots

And here's what the final plots looks like, perhaps the text size on the left plot could be a little smaller:

enter image description here


You can also use factoextra which also has a ggplot2 backend:

fit <- princomp(USArrests, cor=TRUE)

enter image description here

Or ggord :


enter image description here

Or ggfortify :

ggplot2::autoplot(fit, label = TRUE, loadings.label = TRUE)

enter image description here


This will get the states plotted, though not the variables

fit.df <- as.data.frame(fit$scores)
fit.df$state <- rownames(fit.df)


enter image description here

Your Answer

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.