I have a dataframe made up of an integer and two categorical variables
x<-sample(1:150, 100, replace=TRUE) z<- sample(x=c("A","B"), size=100, replace=TRUE, prob=rep(1/2, 2)) w<-sample(x=c("Site1", "Site2"), size=100, replace=TRUE, prob=rep(1/2,2)) df<-cbind(x,z,w) df<-data.frame(df) colnames(df) <- c("Age", "Maturity", "Site") df$x<-as.numeric(df$x)
I'm trying to use ggplot to make a plot of two overlapping density plots which are coloured by maturity stage, with mean vertical lines for each stage, and to be faceted by site. I used this code
cdat <- ddply(df, "Maturity", summarise, Agemean=mean(Age)) ggplot(df, aes(x=Age, fill=Maturity)) + geom_density(alpha=.2) + geom_vline(data=cdat, aes(xintercept=Agemean, colour=Maturity), linetype="dashed", size=1)+ facet_grid(Site~.)
I want the plot to instead have 4 vlines, 2 on each facet for the maturity stages. I looked around for an answer and found that I had to create a dataframe with the mean values, but I was only able to make it apply one unique vline to each facet.
Any help would be appreciated
P.S. Apologies for how untidy the data generation code is.