I'm trying to figure out the best way of doing this, ideally in Octave, but I'll take NumPy at a pinch.

Let's say I have an axb matrix M. If I want the row indices of the maximum value in any given column, `[x, xi] = max(M)`

will return these indices for me as a row vector.

For example, if M is:

```
1 3 5
2 9 1
7 2 4
```

The above will return row vector `[3 2 1]`

as `xi`

; A vector of the indices of each row which contains the maximum value for that column. This is good. I want this row vector.

But what if I want the top *n* such row vectors?

[edited to explain this better]

For the above example, the first such vector would be the above `[3, 2, 1]`

, (the indices of the rows with the highest values for each given column). The second such vector would be `[2 1 3]`

, (the indices of the rows with the *second-highest* values for each column).

I could do it iteratively, but my actual matrices have many thousands of rows, so this would be quite computationally expensive. I can't find any obvious matrix utility function to help me achieve this. Any suggestions?

nsuch row vectors"? What would you get in your example forn= 2? – Eitan T Jun 18 '13 at 13:48