# Computing ratios of groups in dplyr based on values from other rows

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?

• Try `df1 %>% group_by(color) %>% mutate(ratio = score/score)` or if the 'year' value changes for each 'color', then `mutate(ratio = score/score[year==1980])` – akrun Feb 16 '17 at 3:33
• @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

## 1 Answer

akrun's comment answered my question:

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

is exactly what I needed here.