Without an example I cannot be certain I understand what you want. However, I think you want something like this. If so, there are almost certainly better ways to do the same thing.

```
a <- matrix(c(1,2,
3,4,
5,6,
7,8), nrow=4, byrow=T, dimnames = list(NULL, c("x","y")))
b <- matrix(c(1,2,
9,4,
9,6,
7,9), nrow=4, byrow=T, dimnames = list(NULL, c("x","y")))
cc <- matrix(c(NA,NA,
NA,NA,
NA,NA,
NA,NA), nrow=4, byrow=T, dimnames = list(NULL, c("x","y")))
for(i in 1:dim(a)[1]) {
for(j in 1:dim(a)[2]) {
if(a[i,j]==b[i,j]) cc[i,j]=a[i,j]
}
}
cc
```

EDIT: January 8, 2013

The following line will tell you which cells differ between the two matrices:

```
which(a != b, arr.ind=TRUE)
# row col
# [1,] 2 1
# [2,] 3 1
# [3,] 4 2
```

If the two matrices, a and b, are identical then:

```
which(a != b)
# integer(0)
which(a != b, arr.ind=TRUE)
# row col
```

EDIT January 9, 2012

The following code demonstrates the effect that row names can have on `identical`

, `all.equal`

and `which`

when one of the two data frames is created by subsetting a third data frame. If row names differ between the two data frames being compared then neither `identical`

nor `all.equal`

will return `TRUE`

. However, `which`

can still be used to compare the columns `x`

and `y`

between the two data frames. If row names are set to `NULL`

for each of the two data frames being compared then both `identical`

and `all.equal`

will return `TRUE`

.

```
df1 <- read.table(text = "
group x y
1 10 20
1 10 20
1 10 20
1 10 20
2 1 2
2 3 4
2 5 6
2 7 8
", sep = "", header = TRUE)
df2 <- read.table(text = "
group x y
2 1 2
2 3 4
2 5 6
2 7 8
", sep = "", header = TRUE)
# df3 is a subset of df1
df3 <- df1[df1$group==2,]
# rownames differ between df2 and df3 and
# therefore neither 'all.equal' nor 'identical' return TRUE
# even though the i,j cells of df2 and df3 are the same.
# Note that 'which' indicates no i,j cells differ between df2 and df3
df2
df3
all.equal(df2, df3)
identical(df2, df3)
which(df2 != df3)
# set row names to NULL in both data sets and
# now both 'all.equal' and 'identical' return TRUE.
# Note that 'which' still indicates no i,j cells differ between df2 and df3
rownames(df2) <- NULL
rownames(df3) <- NULL
df2
df3
all.equal(df2, df3)
identical(df2, df3)
which(df2 != df3)
```

`df1 <- data.frame(x = rnorm(10), y = rnorm(10))`

and two of these can be directly subtracted provided they have the same column names (but the order of your rows would be critical to a correct answer). – Bryan Hanson Jun 11 '12 at 11:53