I've seen a lot of posts about how to add a rank column to the frame, but none on how to just make a variable, ranks, with the data from the ranking procedure. I figured, heck, why not just take the ranking function from inside the transform data.frame function and use that:
transform(df, year.rank = ave(count, year, FUN = function(x) rank(-x, ties.method = "first")))
Buuuut that's trying to count occurrences in a year and thus isn't applicalbe to me. I just want to take the information from the cells in in the data frame and rank them. I'm trying to do the Kruskal-Wallis test, but use permutations to find the p-value (which
kruskal.test() doesn't do).
I tried to just use
rank() on my data frame, but I get this:
Week2_NoAnti Week2_NaN3 Week2_TCS Week2_EDTA <NA> <NA> 1 4 6 10 11 12 <NA> <NA> <NA> <NA> <NA> <NA> 2 3 7 5 8 9
which is less than helpful. The data frame looks like this:
Week2_NoAnti Week2_NaN3 Week2_TCS Week2_EDTA 1 0.0000 0.7665 0.0756 0.1060 2 0.0938 0.9222 0.0806 0.1289 3 0.1243 1.0109 0.1283 0.1882
As previously stated, I'd like to rank the cells. I will also need to later know which column they came from so I can average the ranks that each column got, so I can't just put them all into a vector and rank the vector.
Thanks for the help!
EDIT: Realized a better way to do the data frame might be to have one column with values, and another column with the label. Currently experiencing difficulty making the head() function show more than six results..., but here is what it shows:
Groups agValues 1 Week2_NoAnti 0.0000 2 Week2_NoAnti 0.0938 3 Week2_NoAnti 0.1243 4 Week2_NaN3 0.7665 5 Week2_NaN3 0.9222 6 Week2_NaN3 1.0109
Sorry for wasting your time! The above organization made it much easier:
ranks = rank(agValues) mean(ranks[Groups=="Week2_NoAnti"])