I would like to make a new data frame which only includes common rows of two separate data.frame. example:

data.frame 1

1 id300
2 id2345
3 id5456
4 id33
5 id45
6 id54


1 id832
2 id300
3 id1000
4 id45
5 id984
6 id5456
7 id888

So I want my output be:

1 id300
2 id45
3 id5456

any suggestion please?

7 Answers 7


The appropriate dplyr function here is inner_join (returns all rows from df x that have a match in df y.)

inner_join(df1, df2)

1  id300
2 id5456
3   id45

Note: the rows are returned in the order in which they are in df1. If you did inner_join(df2, df1), id45 would come before id5456.

  • Is it possible to delete the intersection from df1?
    – Pharcyde
    Commented Apr 7, 2020 at 15:59
  • 2
    Yes, I think you would use anti_join(df1, df2). Check out the function documentation for the specifics.
    – Joe
    Commented Apr 7, 2020 at 20:00
common <- intersect(data.frame1$col, data.frame2$col)  
data.frame1[common,] # give you common rows in data frame 1  
data.frame2[common,] # give you common rows in data frame 2
  • 1
    I also like dplyrs intersect (seperate package)
    – Helix123
    Commented Oct 3, 2015 at 8:56
  • 6
    I think this answer is not answering the question correctly. It does not even generalize to data.frames with two or more columns.
    – raymkchow
    Commented Jul 20, 2017 at 8:12
  • Agree with @raymkchow. Works fine for the specific example where there's only one column per dataframe, but would be nice to have a more general solution
    – jruf003
    Commented Mar 28, 2019 at 23:57
  • Beware of intersect ! If you happen to have a certain value show up twice in both dataframes, you will only get one of those rows returned. You may or may not want this effect. Commented Aug 24, 2020 at 17:56

Use merge

new_data_frame <- merge(data.frame1, data.frame2)

I'm assuming you have only one column in each data frame and they have the same name in both frames. If not use the column you want to intersect by with by.x = "nameCol1" and by.y = "nameCol2", where nameCol are the real column names.

Added after first comment
If you have more columns in any data frame the command is the same. Do it this way:

>a  #Data frame 1
      c1 c2
1  id300  6
2 id2345  5
3 id5456  4
4   id33  3
5   id45  2
6   id54  1

> b #Data frame 2
     a  f
1  asd 12
2 id33 10
3 id45  8
4 id54  6

As you may see, they don't share column names and have 2 columns each. So:

> merge(a,b, by.x = "c1", by.y = "a")

    c1 c2  f
1 id33  3 10
2 id45  2  8
3 id54  1  6

The only rows that are left are those that have the same entries in common in the selected columns.

  • if I have more than one column in secound data frame and if I want them to show up in new data frame then how should I change this command?
    – zara
    Commented Oct 3, 2015 at 1:37

We can also do this with fintersect from data.table after converting the data.frame to data.table

fintersect(setDT(df1), setDT(df2))
#       v1
#1:  id300
#2:   id45
#3: id5456


df1 <- structure(list(v1 = c("id300", "id2345", "id5456", "id33", "id45", 
"id54")), .Names = "v1", class = "data.frame", row.names = c("1", 
"2", "3", "4", "5", "6"))

df2 <- structure(list(v1 = c("id832", "id300", "id1000", "id45", "id984", 
"id5456", "id888")), .Names = "v1", class = "data.frame", row.names = c("1", 
"2", "3", "4", "5", "6", "7"))
  • how to do the same with multiple columns in a single dataframe ? I have 37 columns which are unequal in length ...
    – kcm
    Commented Sep 15, 2020 at 9:31
  • @krushnachChandra Not clear about your issue. Do you want to get the intersect from a single data.frame. then do Reduce(intersect, df1)
    – akrun
    Commented Sep 15, 2020 at 16:30

To achieve this, you should assign the row names in both data frame and then process with intersect in R. This can be achieved with the following command:


Sometimes it might simply be useful to get a logical vector indicating which rows in a dataframe or matrix a are identical to rows in dataframe or matrix b, optionally over a (sub)set of subcol columns:

    b[, subcol, drop = FALSE],
    a[, subcol, drop = FALSE]
))[(nrow(b) + 1): (nrow(b) + nrow(a))]

No add-on package required. Mind that entries in a[, subcol, drop = FALSE] must not be duplicated themselves.


Use intersect function of dplyr package

  1. install this package

  2. use this function like

    var_name <- intersect(Name of 1st dataset, Name of 2nd dataset)

The best thing about this is it can work with character also while merge and inner_join cannot able to give results also you can use this function to see where is their location on your dataset

for (i in (no. of duplicates ) ) {
 for (j in ( no. of rows in other dataset  ) ) {
  if (new[i] == ac$variable_name[j]) {

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