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I have a dataframe with three variables: ID, group, and nominated_ID. I want to know the group that nominated_ID belongs in.

I'm imagining that for each case, we take nominated_ID, find the case where it is equal to ID, and then set the nominated_Group variable in the original case equal to the group variable in the matched case. (If there is no match, set it to NA)

I wouldn't be surprised if this can be done without a loop, so I'm open-minded about the solution. Thanks so much for your help. Know that I did try to look for similar questions before posting.

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4 Answers 4

up vote 4 down vote accepted

You can achieve this in one step without the use of cbind by directly allocating results to a column in your data.frame:

df$nominated_group <- with(df, group[match(nominated_ID, ID)])
df
  ID group nominated_ID nominated_group
1  9   Odd            9             Odd
2  5   Odd            8            <NA>
3  2  Even            4            Even
4  4  Even            9             Odd
5  3   Odd            2            Even

I used with as a convenient way of referring to the columns of df without having to repeatedly write df$.

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The following seems to work; there may be better ways

> df <- data.frame(ID = c(9, 5, 2, 4, 3), 
+                  group = c("Odd", "Odd", "Even", "Even", "Odd"),
+                  nominated_ID = c(9, 8, 4, 9, 2)                 )
> df
  ID group nominated_ID
1  9   Odd            9
2  5   Odd            8
3  2  Even            4
4  4  Even            9
5  3   Odd            2
> nominated_Group <- df[match(df$nominated_ID, df$ID), ]$group
> newDF <- cbind(df, nominated_Group)
> newDF
  ID group nominated_ID nominated_Group
1  9   Odd            9             Odd
2  5   Odd            8            <NA>
3  2  Even            4            Even
4  4  Even            9             Odd
5  3   Odd            2            Even
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I'm not sure what the protocol is (and would like to be informed), but I'm leaning towards calling this the solved answer because it is both good and was first, while noting and voting up the code simplifications made by @Prasad df <- transform( df, nominated_group = group[match(nominated_ID, ID)]) and @Andrie df$nominated_group <- with(df, group[match(nominated_ID, ID)]) Perhaps I can sneak in a follow-up question... how do I create a parent_group variable such that in all nominations occur within the same parent_group? –  Michael Bishop May 8 '11 at 18:33

You can do this in a syntactically compact way using transform, match and array indexing. Using @Henry's data-frame:

df <- transform( df, nominated_group = group[match(nominated_ID, ID)])

> df
  ID group nominated_ID nominated_group
1  9   Odd            9             Odd
2  5   Odd            8            <NA>
3  2  Even            4            Even
4  4  Even            9             Odd
5  3   Odd            2            Even
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Probably not the most "intuitive' way, but merging df against df also works if you use nominated_ID as the merge index for the first copy and ID as the by index for the second and keep all rows. You need to drop the second nominated_ID column and rearrange the order to get things to match the answers above:

merge(df,df, by.x=3, by.y=1, all.x=TRUE)[order(df$nominated_ID), c(2,3, 1, 4)]

  ID group.x nominated_ID group.y
5  4    Even            9     Odd
3  5     Odd            8    <NA>
2  2    Even            4    Even
1  3     Odd            2    Even
4  9     Odd            9     Odd
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