I'm trying to do some data summarization using R and dplyr. My data frame has many rows of the following form:

 color   year       score
 <fctr>  <int>       <int> 

I have the same number of year rows for each of N different colors. For each of these, I have a score. Within each color (group), I'd like to compute the ratio of all of the scores to one particular year. For example:

   color   year       score
   <fctr>  <int>       <int> 
1  blue    1980        43
2  blue    1982         13
3  red     1980         330
4  red     1998         89

I'd like to augment this frame with a new column called "ratio" which is the quotient of the score of each row within each color group (e.g., blue or red) and the score of the row with a fixed year, 1980. For example:

   color   year       score    ratio
   <fctr>  <int>       <int>    
1  blue    1980        43       1
2  blue    1982         13      0.302325581
3  red     1980         330     1
4  red     1998         89      0.269696969

I know how to use mutate and summarize, but it's not clear to me how to select out the score value for a given row that meets a certain condition (in this case, the row with the year 1980 (of which we are guaranteed just one)) within each group.

What's a clean way to do this?

  • 3
    Try df1 %>% group_by(color) %>% mutate(ratio = score/score[1]) or if the 'year' value changes for each 'color', then mutate(ratio = score/score[year==1980]) – akrun Feb 16 '17 at 3:33
  • 1
    @akrun this works perfectly. thank you! – Kulluk007 Feb 16 '17 at 13:39
  • No problem, glad to help you. I guess there would be some dupe links. – akrun Feb 16 '17 at 13:40

akrun's comment answered my question:

mutate(ratio = score/score[year==1980]) 

is exactly what I needed here.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.