# Statistical operation between two data frame in R

I have two large data frame, one with simulation data and the other one with observation data. The columns represent the points where I want to compare and the rows the hours.

``````dim(SIM)
[1]  400 1000

dim(OBS)
[1]  400 1000
``````

400 are the numbers of hours and 1000 the points that I want to compare. The observation data frame contain also a lot of NA values. So when I try to apply that function on the two data frame:

``````BIAS <- function(x, y) {
x <- na.omit(x)
y <- na.omit(y)
res <- mean(x - y)
}
``````

the NA values are removed from the observation data frame, which at the end is empty since there is a least one NA for each line.

How can I reformulate this so that I can perform operation and end up with a new data frame:

``````length(VALUEBIAS)
[1]  1000
``````

that contains the bias for all the points? One solution could be to rotate through the columns, merge them together, remove the NA value and perform the statistics, but I guess that there should be a more elegant way changing the function.

Thanks.

-
do you want the `mean` for the whole data or for every `hour`? –  Arun Jun 24 '13 at 10:27

Without a reproducible example , I can just suggest you try set `na.rm` parameter :

Try this for example:

`````` BIAS <- function(x, y) { mean(x-y,na.rm=TRUE)}
``````

But with further information we can maybe vectorize your operation.

-
Thanks. In fact I was trying this but I forget to remove the first to line of the function and I was still getting problems. I guess I can apply this also for the rmse like RMSE <- function(x, y) { res <- sqrt(mean(x - y,na.rm=TRUE) ^ 2) } –  g256 Jun 24 '13 at 10:34
yes you can.... –  agstudy Jun 24 '13 at 10:36
Actually the first column represent the date. It would be nice to exclude this from the calculation. Otherwise the function report a zero in that position. –  g256 Jun 24 '13 at 10:52