I have a dataframe named `commodities_3`

. It contains 28 columns with different commodities and 403 rows representing end-of-month data. What I need is to find the position for each row separately:

- max value,
- min value,
- all other positives
- all other negatives

Those index should then be used to locate the corresponding data in another dataframe with the same column and row characteristics called `commodities_3_returns`

. These data should then be copied into 4 new dataframes (one dataframe for each sorting).

I know how to find the positions of the values for each row using which and which.min and which.max. But I don't know how to put this in a loop in order to do it for all 403 rows. And subsequently how to use this data to locate the corresponding data in the other dataframe `commodities_3_returns`

.

Unfortunaltey I have to use a dataframe because I have dates as rownames in there, which I have to keep as I need them later for indexing, as well as NA's. It looks about like this:

```
commodities_3 <- as.data.frame(matrix(rnorm(15), nrow=5, ncol=3))
mydates <- as.Date(c("2011-01-01", "2011-01-02", "2011-01-03", "2011-01-04", "2011-01-05"))
rownames(commodities_3) <- mydates
commodities_3[3,2] <- NA
commodities_3_returns <- as.data.frame(matrix(rnorm(15), nrow=5, ncol=3))
mydates <- as.Date(c("2011-01-01", "2011-01-02", "2011-01-03", "2011-01-04", "2011-01-05"))
rownames(commodities_3_returns) <- mydates
commodities_3_returns[3,3] <- NA
```

As I said, I have in total 403 rows and 27 columns. In every row, there are some NA's which I have to keep as well. max.col doesn't seem to be able to handle NA's.

My desired output for the above mentioned example would be sth like this:

```
max_values <- as.data.frame(matrix(data=c(1:5,3,2,1,3,1), nrow=5, ncol=2, byrow=F))
```