I'm having a hard time reshaping a dataframe for use with error bar plots, combining all the columns with centeral-tendency data and, separately, all the columns with error data.
I start with a data frame with a column for the independent variable, and then two columns for each measured parameter: one for the average value, and one for the error, as you'd typically format a spreadsheet with this kind of data. The initial data frame looks like this:
df<-data.frame( indep=1:3, Amean=runif(3), Aerr=rnorm(3), Bmean=runif(3), Berr=rnorm(3) )
I'd like to use melt and dcast to get it into a form that looks like this:
df.cast<-data.frame( indep=rep(1:3, 2), series=c(rep("A", 3), rep("B", 3)), means=runif(6), errs=rnorm(6) )
So that I can then feed it to ggplot like this:
qplot(data=df.cast, x=indep, y=means, ymin=means-errs, ymax=means+errs, col=series, geom="errorbar")
I've been trying to melt and then recast using expressions like this:
df.melt<-melt(df, id.vars="indep") dcast(df.melt, indep~(variable=="Amean"|variable=="Bmean") + (variable=="Aerr"|variable=="Berr") )
but these return a dataframe with funny boolean columns.
I could manually make two dataframes (one for the mean values, one for the errors), melt them separately, and recombine, but surely there must be a more elegant way?