# Conditional filtering based on the level of a factor R

I would like to clean up the following code. Specifically, I'm wondering if I can consolidate the three filter statements so that I end up with the final data.frame (the rind()) that contains the row of data "spring" if it exists, the row of data for "fall" if "spring" doesn't exist, and finally the row of data if neither "spring" nor "fall" exist. The code below seems very clunky and inefficient. I am trying to free myself of for(), so hopefully the solution won't involve one. Could this be done using dplyr?

``````# define a %not% to be the opposite of %in%
library(dplyr)
`%not%` <- Negate(`%in%`)
f <- c("a","a","a","b","b","c")
s <- c("fall","spring","other", "fall", "other", "other")
v <- c(3,5,1,4,5,2)
(dat0 <- data.frame(f, s, v))
sp.tmp <- filter(dat0, s == "spring")
fl.tmp <- filter(dat0, f %not% sp.tmp\$f, s == "fall")
ot.tmp <- filter(dat0, f %not% sp.tmp\$f, f %not% fl.tmp\$f, s == "other")
rbind(sp.tmp,fl.tmp,ot.tmp)
``````
• Is it ever possible there are multiple "spring"s within an "a", a "b", or a "c"? And if it is, do you want to keep all of them or just the first? – David Robinson Jul 10 '14 at 15:08
• It is not possible to have multiple "spring"s for "a", "b", ... – cdd Jul 10 '14 at 15:11

It looks like within each group of `f`, you want to extract the row of, in descending order of preference, `spring`, `fall`, or `other`.
``````dat0\$s <- factor(dat0\$s, levels=c("spring", "fall", "other"))
``````newdat <- dat0 %.% group_by(f) %.% filter(rank(s) == 1)