# R correlation between 2 dataframes by row

I have 2 data frames w/ 5 columns and 100 rows each.

``````id       price1      price2     price3     price4     price5
1         11.22      25.33      66.47      53.76      77.42
2         33.56      33.77      44.77      34.55      57.42
...
``````

I would like to get the correlation of the corresponding rows, basically

``````for(i in 1:100){
cor(df1[i, 1:5], df2[i, 1:5])
}
``````

but without using a for-loop. I'm assuming there's someway to use `plyr` to do it but can't seem to get it right. Any suggestions?

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Depending on whether you want a cool or fast solution you can use either

``````diag(cor(t(df1), t(df2)))
``````

which is cool but wasteful (because it actually computes correlations between all rows which you don't really need so they will be discarded) or

``````A <- as.matrix(df1)
B <- as.matrix(df2)
sapply(seq.int(dim(A)[1]), function(i) cor(A[i,], B[i,]))
``````

which does only what you want but is a bit more to type.

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+1 That first one is cool. Also, `t(as.matrix(df1))` can become `t(df1)`, etc., since the coercion to matrix takes place implicitly when `t()` is passed a data.frame. –  Josh O'Brien Feb 3 '12 at 22:22
Ah, great, thanks (this is where my low-level thinking gets me ;)), I'll edit that –  Simon Urbanek Feb 3 '12 at 22:51
That did it. Thank you very much. –  screechOwl Feb 3 '12 at 23:24

I found that `as.matrix` is not required.

Correlations of all pairs of rows between dataframes `df1` and `df2`:

``````sapply(1:nrow(df1), function(i) cor(df1[i,], df2[i,]))
``````

and columns:

``````sapply(1:ncol(df1), function(i) cor(df1[,i], df2[,i]))
``````
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