I have some aggregate data that I would like to visualize using ggplot2 and I am now looking for a smart shortcut to plot aggregate data?
The data I have looks like this, (I currently only have data like
df <- data.frame(cyl = mtcars[,2]) (df2 <- t(table(df$cyl))) 4 6 8 [1,] 11 7 14
and I am interested to create a plot like this, (see below for
code used to create this plot)
require(ggplot2) df <- data.frame(cyl = mtcars[,2]) df$cyl2 <- ifelse(df$cyl > 4, c('Treatment'), c('Control')) # hline.data <- data.frame(cyl2 = c('Treatment', 'Control'), cyl = c(10, 2)) c <- ggplot(df, aes(factor(cyl))) c + geom_bar(fill="white", colour="darkgreen", alpha=0.5) + facet_grid(. ~ cyl2, scales = "free", space = "free") + theme(axis.title.x = element_blank(), axis.title.y = element_blank(), axis.ticks.x = element_blank(), legend.position = "none") + scale_y_continuous(breaks=c(4, 6, 8), labels=c("Minimal","Mild", "Moderate")) + scale_x_discrete(breaks=c(6,8,4), labels=c("Treat 1", "Treat 2", "Control"))
Bonus question for people who make it this far. Is it possible to make the
breaks= in the
scale_y_continuous different in the two facets? Or would it be a better strategy to add an
geom_hline and add some text in the margins? It seems as it is quite tricky to add in margins, I would have to override the clipping like this or and this?