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have the following data frames:


I need to find the ids in df1 which also exist in df2 and export all their information to a new data frame (let's say df3). on this basis df3 should look as follow:

   id1     spent
   1         10
   3         30
   4         40

I would be thankful if you could help me with this problem.

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-1 duplicate: stackoverflow.com/questions/9297237/… –  Kay Sep 6 '12 at 14:33

2 Answers 2

up vote 6 down vote accepted

Use merge see ?merge for get information about by.x and by.y arguments

merge(df1, df2, by.x="id1", by.y="id2")[,-3] # this is the desired output you showed
  id1 spent
1   1    10
2   3    30
3   4    40

merge(df1, df2, by.x="id1", by.y="id2") # this is with "all their information"
  id1 spent x
1   1    10 1
2   3    30 2
3   4    40 2
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You could use the data.table package, which might be faster than using merge if you're merging a lot of IDs. For example,


dt1 <- data.table(id1, spent, key = "id1")

#    id1 spent
# 1:   1    10
# 2:   3    30
# 3:   4    40

n.b. The unique also probably isn't necessary, but I included it in case the real data include duplicate id2s.

EDIT The J() is necessary, plus see the comment by Matthew Dowle.

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The J() is necessary, otherwise it would lookup by row number rather than the column contents. J() (or .() etc) is only optional on character input, but needed for numeric. Might be easier to point people to use merge(), but use merge() on data.table for the speed. That can maybe introduce data.table more easily than needing to learn J() etc. The merge.data.table method is a lot faster in v1.8.0+ than it used to be, as fast as X[Y] in many cases. –  Matt Dowle Sep 6 '12 at 13:20

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