ddply function, empty categories are dropped by default. You can change this behavior by adding
.drop = FALSE. However, this doesn't work when using
dplyr. Is there another way to keep empty categories in the result?
Here's an example with fake data.
library(dplyr) df = data.frame(a=rep(1:3,4), b=rep(1:2,6)) # Now add an extra level to df$b that has no corresponding value in df$a df$b = factor(df$b, levels=1:3) # Summarise with plyr, keeping categories with a count of zero plyr::ddply(df, "b", summarise, count_a=length(a), .drop=FALSE) b count_a 1 1 6 2 2 6 3 3 0 # Now try it with dplyr df %.% group_by(b) %.% summarise(count_a=length(a), .drop=FALSE) b count_a .drop 1 1 6 FALSE 2 2 6 FALSE
Not exactly what I was hoping for. Is there a
dplyr method for achieving the same result as