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Is there an existing function for determining whether a row exists within a data frame? I suppose could do an apply/identical, but it seems like I'm missing something.

For example:

given such a data frame:

  a   b
1 1 cat
2 2 dog

Is there an existing function which will allow me to test whether the row (1, cat) exists in the data frame?

Thanks, Zach

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Row based on what? Do you have a concrete example? –  mcpeterson May 6 '11 at 20:48
@mcpeterson, I've added a simple example. Thanks –  Zach May 6 '11 at 21:03

5 Answers 5

up vote 2 down vote accepted

For data from @Marek answer.

nrow(merge(row_to_find,X))>0 # TRUE if exists
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Works for me. Thanks. –  Zach May 9 '11 at 16:10
It does not work to me. It gives always TRUE. –  DavideChicco.it Feb 10 at 17:18

Try match_df from plyr (using Marek's sample data):

X <- data.frame(a=1:2, b=c("cat","dog"))
row_to_find <- data.frame(a=1, b="cat")

match_df(X, row_to_find)
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Hmmm. I can't seem to find match_df in the plyr library. –  Zach May 9 '11 at 16:14
Do you have the latest version? –  hadley May 9 '11 at 16:48
That would be it. Thanks. –  Zach May 9 '11 at 19:10

Taking your example:

X <- data.frame(a=1:2, b=c("cat","dog"))
row_to_find <- data.frame(a=1, b="cat") # it has to be data.frame (not a vector) to hold different types


duplicated(rbind(X, row_to_find))[nrow(X)+1]

gives you answer.

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Thanks. I imagine duplicated might run a touch slower than apply though. –  Zach May 6 '11 at 21:17
I'd expect duplicated to be considerably faster than apply –  hadley May 7 '11 at 0:10
It is quite a bit faster. Off the top of my head I was thinking n vs n^2 comparisons. Thanks. –  Zach May 9 '11 at 16:13

For vector, y, with same number of elements as columns in dataframe, dfrm:

apply(dfrm, 1, function(x) all( x == y) )

Should return a vector of TRUE and FALSE which could in turn be used as an index in [,]

dfrm[ apply(dfrm, 1, function(x) all( x == y) ) , ]

The identical function is probably too stringent, since it will check attributes as well.

> y=c(1,2,3)
> x = data.frame(a=1:10, b=2:11, c=3:12)
> identical(x[1,] , y)
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Thanks. So no existing function? It seems like a pretty common problem. –  Zach May 6 '11 at 21:07
You could use merge. With Marek's example, try: merge(x, row_to_find, 1,1) –  BondedDust May 6 '11 at 21:47
all(x == y) will be buggy because it will coerce x and y to be the same type. –  hadley May 7 '11 at 0:09
Thanks. It's good to keep that in mind. –  Zach May 9 '11 at 16:14

You can speed this up a bit using anyDuplicated:

> find.row <- function(row, dfrm) anyDuplicated(rbind(row, dfrm)) > 1

Test it :

> dfrm <- data.frame(a=c(1 ,2), b=c("cat", "dog"), stringsAsFactors=FALSE)

> find.row(c(1, "cat"), dfrm) #TRUE

> find.row(c(1, 3), dfrm)     #FALSE
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