I want to write a function to analyze a data set where I need to aggregate/group by/split on each combination of identification variables. Unfortunately the measurement variable are numerous, often change and enumerating them leads to brittle code and bugs in the inputs.
dat <- data.frame(id.a=c('aa','bb','aa','bb'),id.b=c('x','y','x','x'),m.c=c(1:4),m.d=c(5:8)) id.vars <- c('id.a', 'id.b') measure.vars <- setdiff(names(dat),id.vars)
I would like to sum up my measurment variables. I have found ways but they are all hacky. The result would be
id.a id.b m.c m.d 1 aa x 4 12 2 bb y 2 6 3 bb x 4 8
I think that reshape2 or ddply is likely to be a solution.