# R: How can I find the intersection of elements from two rows of a dataframe?

I'm just getting started with R, and I'm wondering how I can find the intersection of the elements from two rows of a dataframe. I tried

``````intersect(thing[1,],thing[2,])
``````

but it gave me a complete nonsense answer (something that definitely is not in the intersection, while omitting the thing that was in the intersection).

How should I approach this problem?

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Can you provide the data set so we can reproduce the error or even better a minimal spinet of data that reproduces the error? –  Tyler Rinker Mar 6 '12 at 21:50
A quick example of `thing <- matrix(c(1:10,5:14),2,byrow=TRUE);intersect(thing[1,],thing[2,])` works just fine, so what is your data and what do you expect? –  Sacha Epskamp Mar 6 '12 at 22:16
This sounds similar to the my problem, but I use a list of lists, and I would obtain an adjacent matrix (a matrix with lengths of all possibles intersection sets). In my chase, the intersection with itself produce lengths equal to 1, the other equal to 0... –  gunzapper Jul 10 '13 at 13:28
sorry folks... I made I big mistake.... in my case I'm working with a list of vectors, to fix it I'm using now `[[i]]` instead of `[i]` to reach the vector... XD –  gunzapper Jul 10 '13 at 13:40

If the columns are all of the same type (e.g. all numbers), first convert to a matrix via as.matrix, then apply intersect. For example, if the data frame is called z:

``````zz <- as.matrix(z)
intersect(zz[1,], zz[2,])
``````

If the columns have different types of variables, it may be necessary to first identify which columns are actually comparable, since you wouldn't want to compare a level variable to an integer. For example:

``````z <- data.frame(AA = c( 1,   1,   3,   4),
BB = c( 1,   5,   3,   1),
CC = c('1', 'a', 'b', 'b'),
DD = c( 1,   2,   3,   4)
z[z[,1] == z[,3],1]
``````

While "1" will be returned here, the "1" can have a completely different meaning for a level variable and for a numeric variable, so we shouldn't want to compare numerical variables and level variables, at least not without careful oversight.

There may be a slick solution for the scenario where the data frame has several different types, but nothing is coming to mind...

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