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I have a dataframe with counts of different items, in different years:

df <- data.frame(item = rep(c('a','b','c'), 3),
                 year = rep(c('2010','2011','2012'), each=3),
                 count = c(1,4,6,3,8,3,5,7,9))

And I would like to add a "year.rank" column, which gives an item's rank within a given year, where a higher count leads to a higher "rank". With the above, it would look like:

  item year count year.rank
1    a 2010     1         3
2    b 2010     4         2
3    c 2010     6         1
4    a 2011     3         2
5    b 2011     8         1
6    c 2011     3         3
7    a 2012     5         3
8    b 2012     7         2
9    c 2012     9         1

I know I could do this for the whole data frame using order(df$count), but I'm not sure how I would do it by year.

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4 Answers 4

up vote 16 down vote accepted

There is a rank function to help you with that:

transform(df, 
          year.rank = ave(count, year, 
                          FUN = function(x) rank(-x, ties.method = "first")))
  item year count year.rank
1    a 2010     1         3
2    b 2010     4         2
3    c 2010     6         1
4    a 2011     3         2
5    b 2011     8         1
6    c 2011     3         3
7    a 2012     5         3
8    b 2012     7         2
9    c 2012     9         1
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+1 because I tried with rank without succes!! i am stuck with the rank function! –  agstudy Mar 2 '13 at 4:53
1  
@agstudy, I had actually originally posted too quickly, without success. The key was the -x (since rank usually goes low to high), and ties.method (since rank usually defaults to average). –  Ananda Mahto Mar 2 '13 at 4:56
    
This is great, thank you. –  Wilduck Mar 2 '13 at 5:09

data.table version for practice:

library(data.table)
DT <- as.data.table(df)
DT[,yrrank:=rank(-count,ties.method="first"),by=year]

   item year count yrrank
1:    a 2010     1      3
2:    b 2010     4      2
3:    c 2010     6      1
4:    a 2011     3      2
5:    b 2011     8      1
6:    c 2011     3      3
7:    a 2012     5      3
8:    b 2012     7      2
9:    c 2012     9      1
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+1 nice syntax! –  agstudy Mar 2 '13 at 5:07
3  
This is great. Thank you. Is there any good documentation anywhere for using the side effects portion of data.table? I've been starting to use it, but am not yet as proficient as I'd like. –  Wilduck Mar 2 '13 at 5:09
1  
@Wilduck - this isn't so much a side effect as the main effect! I'm pretty new to data.table too, but I've just been going through the FAQ at cran.r-project.org/web/packages/data.table/vignettes/… Google is your friend! –  thelatemail Mar 2 '13 at 5:16
    
By side effect I mean that it's performing an operation on the data.table, rather than returning a separate result. en.wikipedia.org/wiki/Side_effect_(computer_science) In any case, I appreciate the response. –  Wilduck Mar 2 '13 at 6:41
    
@Wilduck - there you go, I learned something today. –  thelatemail Mar 2 '13 at 7:45

Using order function,

transform(dat, x= ave(count,year,FUN=function(x) order(x,decreasing=T)))
  item year count x
1    a 2010     1 3
2    b 2010     4 2
3    c 2010     6 1
4    a 2011     3 2
5    b 2011     8 1
6    c 2011     3 3
7    a 2012     5 3
8    b 2012     7 2
9    c 2012     9 1

EDIT

You can use plyr here also:

ddply(dat,.(year),transform,x =  order(count,decreasing=T))
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1  
+1 -- Same approach, different function ;) –  Ananda Mahto Mar 2 '13 at 4:52
    
I love a cleaner solution, I find it better to do ave() than ave(rank()) but in this case you'd have no control over ties.method, right? –  Waldir Leoncio Aug 9 '13 at 17:41

Using dplyr you could do it as follows:

library(dplyr) # 0.4.1
df %>% 
  group_by(year) %>% 
  mutate(yrrank = row_number(-count))

#Source: local data frame [9 x 4]
#Groups: year
#
#  item year count yrrank
#1    a 2010     1      3
#2    b 2010     4      2
#3    c 2010     6      1
#4    a 2011     3      2
#5    b 2011     8      1
#6    c 2011     3      3
#7    a 2012     5      3
#8    b 2012     7      2
#9    c 2012     9      1

It is the same as:

df %>% 
  group_by(year) %>% 
  mutate(yrrank = rank(-count, ties.method = "first"))

Note that the resulting data is still grouped by "year". If you want to remove the grouping you can simply extend the pipe with %>% ungroup().

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