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

Here is an example. 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?

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What the result should be in case of no nulls? –  George Dontas Jul 6 '10 at 21:10

2 Answers 2

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
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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 '10 at 21:46
    
you're right how about match()? edited above –  apeescape Jul 6 '10 at 22:03
    
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 '10 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 '13 at 13:16

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.

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