26

I'm trying to figure out how to use merge() to update a data frame.

Take for example the data frame foo

foo <- data.frame(index=c('a', 'b', 'c', 'd'), value=c(100, 101, NA, NA))

Which has the following values

index value
1     a   100
2     b   101
3     c    NA
4     d    NA

And the data frame bar

bar <- data.frame(index=c('c', 'd'), value=c(200, 201))

Which has the following values:

 index value
1     c   200
2     d   201

When I run the following merge() function to update the values for c and d

merge(foo, bar, by='index', all=T)

It results in this output:

 index value.x value.y
1     a     100      NA
2     b     101      NA
3     c      NA     200
4     d      NA     201

I'd like the output of merge() to avoid the creation of, in this specific example, of value.x and value.y but only retain the original column of value Is there a simple way of doing this?

5
  • What the result should be in case of no nulls?
    – Yorgos
    Jul 6, 2010 at 21:10
  • 3
    Did you ever get answer to this question? I am looking for a solution for this same problem. Jul 6, 2016 at 16:41
  • 2
    I wonder too why merge does not have, say an overwrite=TRUE parameter which would kick in when by is provided. It is incovienent to delete columns manually every time you want to want to rerun a merge.
    – Valentas
    Aug 15, 2017 at 6:35
  • 1
  • I just had the same issue and I think the most direct answer to your question is the answer by @jangorecki below which you should accept
    – Jakob
    May 4, 2021 at 10:48

7 Answers 7

16

The optimal solution using data.table

library(data.table)
setDT(foo)
setDT(bar)
foo[bar, on="index", value:=i.value]
foo
#   index value
#1:     a   100
#2:     b   101
#3:     c   200
#4:     d   201

first argument in [ data.table method is named i thus we can refer to column from table in i argument using i. prefix.

3
  • 2
    How would you do this if there were multiple columns that needed to be updated, say value1, value2, etc.?
    – harisf
    Sep 2, 2021 at 13:22
  • This data.table solution seems to be an ideal replacement for VLOOKUP. Merging or joining dataframes in R does not allow individual values to be updated, which is how this function is often used in excel.
    – user18008505
    Apr 13, 2022 at 12:02
  • 1
    @harisf, I would do this: foo[bar, on="index", `:=` (value1=i.value1, value2=i.value2)] Apr 6, 2023 at 14:08
11

Doesn't merge() always bind columns together? Does replace() work?

foo$value <- replace(foo$value, foo$index %in% bar$index, bar$value)

or match() so the order matters

foo$value[match(bar$index, foo$index)] <- bar$value
4
  • 2
    One wrinkle with using replace() is that if the ordering in bar is not the same as in foo, it won't work properly. For example, if you try running the above example after bar <- bar[c(2,1),], the end result does not come out correct.
    – andrewj
    Jul 6, 2010 at 21:46
  • Yes, match() does work for my example. In reality, it turns out that my actual use case is more complicated, where I would like to match across multiple columns and not just a simple vector. I don't think match() works when you would like to match across multiple columns of a dataframe.
    – andrewj
    Jul 7, 2010 at 18:12
  • Thank you! the idea to use the match() is good... however, if bar is to have another element that is not contained in foo (we want to update and add the new stuff) bar <- data.frame(index=c('c', 'd','e'), value=c(200, 201,215)) Then when we try to use match, we get an error. Error in foo$value[match(bar$index, foo$index)] <- bar$value : NAs are not allowed in subscripted assignments Any ideas how to overcome that?
    – moldovean
    Jan 8, 2013 at 13:16
  • 1
    What if you have multiple columns for indices? Aug 18, 2016 at 20:10
4

I would also like to present an sql-solution using library sqldf and the R integrated sqlite-database. I like the simplicity, accuratness and power of sql.
Accurateness: since I can exactly define which object=rows I want to change without considering the order of a data.frame (foo.id = bar.id).
Power: in WHERE after SET and WHERE (third row) I can define all conditions I want to consider to update.
Simplicity: the syntax is more readable than using index in vectors, matrix or dataframes.

library(sqldf)

# I changed index to id since index does not work. 
#   Obviously index is a key word in sqlite.

(foo <- data.frame(id=c('a', 'b', 'c', 'd'), value=c(100, 101, NA, NA)))
(bar <- data.frame(id=c('c', 'd'), value=c(200, 201)))

sqldf(c(paste("UPDATE foo"
             ," SET value = (SELECT bar.value FROM bar WHERE foo.id = bar.id)"
             ," WHERE value IS NULL"
             )
        , " SELECT * FROM main.foo"
    )
)

Which gives

  id value
1  a   100
2  b   101
3  c   200
4  d   201

Similar issues:
r equivalent of sql update?
R sqlite: update with two tables

1
  • 3
    The SQL statement can run over multiple lines so paste is not needed. Aug 17, 2016 at 20:42
0

merge() only merges in new data. For instance, if you had a data set of average income for a few cities, and a separate data set of the populations of those cities, you would use merge() to merge in one set of data into the other.

Like apeescape said, replace() is probably what you want.

0

Another approach could be:

  1. Remove the NAs from the first data fram

  2. Use rbind to append the data instead of using merge:

These are the original two data frames:

foo <- data.frame(index=c('a', 'b', 'c', 'd'), value=c(100, 101, NA, NA))
bar <- data.frame(index=c('c', 'd'), value=c(200, 201))

(1) Use the negation of is.na to remove the NAs:

foo_new <- foo[!is.na(foo$value),]

(2) Bind the data frames and you'll get the answer you were looking for

new_df <- rbind(foo_new,bar)

            new_df
            index value
            1     a   100
            2     b   101
            3     c   200
            4     d   201
0

I think the most simple way is to "mark" the value which need to be update prior to the merge.

bar$update <- TRUE
foo <- merge(foo, bar, by='index', all=T, suffixes=c("",".update"))
foo[!is.na(foo$update),]$value <- foo[!is.na(foo$update),]$value.update
foo$value.update <- NULL
foo$update <- NULL

It would be faster using 'data.table'

library(data.table)
foo <- as.data.table(foo)
bar <- as.data.table(bar)
bar[, update:=TRUE]
foo <- merge(foo, bar, by='index', all=T, suffixes=c("",".update"))
foo[!is.na(update),value:=value.update]
foo[, c("value.update","update"):=NULL]
foo

   index value
1:     a   100
2:     b   101
3:     c   200
4:     d   201
0

I was facing a similar issue but this is still a specific case as compared to mine. I had 2 dataframes where left one was the master dataframe (like foo in your case) and the right one was minor dataframe with updated values (like bar in your case). Now I had to update the values in left dataframe from the ones in right dataframe only the values which were differing. It is somewhat similar to your issue but people have answered it with respect to NAs.

For more generic solution that is applicable to multiple rows and multiple columns with non NA values.

foo <- data.frame(index=c('a', 'b', 'c', 'd'), value=c(100, 101, NA, NA))
bar <- data.frame(index=c('c', 'd'), value=c(200, 201))

ModifiedIndexs <-
  foo %>% 
  full_join(bar) %>% 
  group_by(index) %>% 
  summarise(count = n()) %>% 
  filter(count > 1) %>% 
  pull(index)

UpdatedDF <- foo
UpdatedDF[which(UpdatedDF$index %in% ModifiedIndexs),] <- bar

Keep Coding!

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