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I'd like to correlate the same column of a dataframe for points with distinct row values. For example, in the iris dataframe, I'd like to make three scatter plots comparing Petal.Length of virginica with that of versicolor, setosa with virginica and versicolor with setosa. I want it to appear just like a normal facet_grid or facet_wrap plot. For example, I can do:

ggplot(iris) + geom_point(aes(x=Petal.Length, y=Petal.Length)) + facet_grid(~Species)

This is not what I want, since it's plotting Petal.Length of each species against itself, but I want the plot to appear like this, except where I handcode which species to compare to what other species. How can this be done in ggplot? Thanks.

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2 Answers 2

up vote 4 down vote accepted

It is better to group the data first. I'd do something like this:

# get Petal.Length for each species separately    
df1 <- subset(iris, Species == "virginica", select=c(Petal.Length, Species))
df2 <- subset(iris, Species == "versicolor", select=c(Petal.Length, Species))
df3 <- subset(iris, Species == "setosa", select=c(Petal.Length, Species))

# construct species 1 vs 2, 2  vs 3 and 3 vs 1 data
df <- data.frame(x=c(df1$Petal.Length, df2$Petal.Length, df3$Petal.Length), 
y = c(df2$Petal.Length, df3$Petal.Length, df1$Petal.Length), 
grp = rep(c("virginica.versicolor", "versicolor.setosa", "setosa.virginica"), each=50))
df$grp <- factor(df$grp)

# plot
require(ggplot2)
ggplot(data = df, aes(x = x, y = y)) + geom_point(aes(colour=grp)) + facet_wrap( ~ grp)

This results in:

enter image description here

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Is there no simpler way to do this? I don't want to use factor since I am using rpy2 and it's getting complex. I can make any dataframe, but want to avoid factor. I guess grp can be a regular column, without being a factor, right? –  user248237dfsf Feb 19 '13 at 22:34
    
I don't know about rpy2. And what do you mean you don't want to use factor? A facetting requires a factor'd variable. –  Arun Feb 19 '13 at 22:49
1  
One word of caution: In the iris data, there is no basis for pairing or matching observations of Petal.Length made on different individual flowers of different species. In this plot you have randomly (but opaquely) made pairs and plotted them. –  bdemarest Feb 20 '13 at 1:45
    
@bdemarest, totally right! I missed to spot that point and mention in my post. Thanks a lot for pointing out. –  Arun Feb 20 '13 at 6:27
    
@bdemarest: fair enough, iris was a bad example, in my data there is a pairing so Arun's solution is what I was looking for. I thought there might be a way to do this without regrouping into a new df but I guess ggplot really relies on reading the info from the df –  user248237dfsf Feb 20 '13 at 18:36

Your question seems to be about comparing a single variable measured on many individuals that fall into multiple categories. Given your example using the iris dataset, a scatterplot is probably not a useful visualization.

Here I offer several univariate visualizations available in ggplot2. I hope one of these is helpful:

library(ggplot2)

plot_1 = ggplot(iris, aes(x=Petal.Length, colour=Species)) +
         geom_density() +
         labs(title="Density plots")

plot_2 = ggplot(iris, aes(x=Petal.Length, fill=Species)) +
         geom_histogram(colour="grey30", binwidth=0.15) +
         facet_grid(Species ~ .) +
         labs(title="Histograms")

plot_3 = ggplot(iris, aes(y=Petal.Length, x=Species)) +
         geom_point(aes(colour=Species),
                    position=position_jitter(width=0.05, height=0.05)) +
         geom_boxplot(fill=NA, outlier.colour=NA) +
         labs(title="Boxplots")

plot_4 = ggplot(iris, aes(y=Petal.Length, x=Species, fill=Species)) +
         geom_dotplot(binaxis="y", stackdir="center", binwidth=0.15) +
         labs(title="Dot plots")

library(gridExtra)
part_1 = arrangeGrob(plot_1, plot_2, heights=c(0.4, 0.6))
part_2 = arrangeGrob(plot_3, plot_4, nrow=2)
parts_12 = arrangeGrob(part_1, part_2, ncol=2, widths=c(0.6, 0.4))
ggsave(file="plots.png", parts_12, height=6, width=10, units="in")

enter image description here

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