I'm writing a function that generates 100 matrices. Once I have this, I need to loop through the first superdiagonal on each matrix and extract the values. These values are supposed to go into a dataframe - 1 column for each superdiagonal. Let me illustrate:

### First Matrix (The positions labeled as X should be extracted)

```
[,1] [,2] [,3] [,4]
[1,] 1 X .2 .1
[2,] .7 .8 X .5
[3,] .6 .9 .4 X
[4,] .5 .1 .1 .2
```

So I need to loop through 100 of these matrices, get all the positions of each matrix labeled as X (first superdiagonal) and then I need to put each first superdiagonal in a data frame like this:

### Output dataframe

```
matrix1 matrix2 matrix3
[1,2] .5 .2 .1
[2,3] .5 .1 .2
[3,4] .3 .7 .8
```

Given this scenario, what is the best way of storing the 100 matrices that I will later access to create the **output dataframe**? Objects? A dataframe consisting of matrices?

Additionally - are there other factors besides the one that I have posted that impacts my choice of data structure?

`sapply`

over each matrix and get back a nice data frame. Also, are all 100 matrices the same dimensions? – Ricardo Saporta Mar 28 '13 at 13:29