I have two dataframes. In the first one, I have a KEY/ID column and two variables:

1   10  2
2   20  4
3   30  6   
4   40  8
5   50 10

In the second dataframe, I have a KEY/ID column and a third variable

1    5  
2   10  
3   20  

I would like to extract the rows of the first dataframe that are also in the second dataframe by matching them according to the KEY column. I would also like to add the V3 column to final dataset.

KEY V1 V2 V3 
1   10  2  5
2   20  4 10 
3   30  6 20   

This are my attempts by using the subset and the merge function

subset(data1, data1$KEY == data2$KEY) 
merge(data1, data2, by.x = "KEY", by.y = "KEY")

None of them does the task.

Any hint would be appreaciated. Thank you!

3 Answers 3


merge(data1, data2, by="KEY") should do it!


If what you want is an inner join, then your attempt should do it. If it doesn't check the formats of Key columns in both the table using class(data1$key).

Apart from these and the merge suggested by Christian, you can use -

join(data1, data2, by="KEY", type="inner")


setkey(data1, KEY)
setkey(data2, KEY)
  • Thank you! I wasn't familiar with the plyr package May 9, 2014 at 9:39

You could use a dplyr *_join. Given the sample data, both of the following would give the same result:

df_merged <- inner_join(data1, data2, by = 'KEY')
df_merged <- right_join(data1, data2, by = 'KEY')

A inner_join returns all rows from df1 where there are matching values in df2, and all columns from df1 and df2.

A right_join returns all rows from df2, and all columns from df1 and df2.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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