Dismiss
Announcing Stack Overflow Documentation

We started with Q&A. Technical documentation is next, and we need your help.

Whether you're a beginner or an experienced developer, you can contribute.

# Top n rows in a matrix?

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?

-
What do you mean by "top n such row vectors"? What would you get in your example for n = 2? – Eitan T Jun 18 '13 at 13:48
For numpy solution to this: stackoverflow.com/questions/6910641/… – chthonicdaemon Jun 18 '13 at 13:52
I've edited to explain this better in the original question. Hopefully it now makes more sense. – R Hill Jun 18 '13 at 14:02

I assume that you mean you want the n biggest values from the matrix. In which case, Get the indices of the n largest elements in a matrix is almost the same question as this, except there the OP wanted the largest values of the whole matrix, not individual maximums. This should get you what you need

``````n = 2;               % The depth to get
M = [ 1, 3, 5; ...
2, 9, 1; ...
7, 2, 4 ];     % The matrix to look at
[m, mi] = sort(M, 'descend');  % Sort the to access them
x = m(1:n, :)        % Get the values
xi = mi(1:n, :)      % and the indices
``````
-
This is, in retrospect, a very obvious way to do this. Thank you. – R Hill Jun 18 '13 at 14:08

Like this?

``````% N is the number of rows you want to include.
[x, xi] = max(a(1:N,:))
``````

This gives you:

``````a =

16     2     3    13
5    11    10     8
9     7     6    12
4    14    15     1

N = 3;
[x, xi] = max(a(1:N,:))

x =
16    11    10    13
xi =
1     2     2     1
``````
-

Here's how to do it in numpy. Please take a look at `numpy.argmax`, which returns indices of the maximum values along an axis. Note that this indices are 0-based so you may want to add/subtract 1 to it to make it 1-based as in matlab.

Taking the same example of @Stewie Griffin :-)

``````In [3]: a = np.array([[16,2,3,13], [5,11,10,8], [9,7,6,12], [4,14,15,1]])

In [4]: N = 2 # A 0-based index

In [5]: np.argmax(a[N], axis=0)
Out[5]: array([0, 1, 1, 0])
``````

Here the axis is 0 because you want max indices in each column. Change it to 1 if you want max indices in each raw. Also, there is `numpy.argmin` if you want min.

Based on your clarification,you want nth largest indices in each column, which is very easy with `numpy.argsort`.

``````In [11]: A = np.argsort(a, axis=0) # returns indices of smallest to largest values in each column

In [12]: A
Out[12]:
array([[3, 0, 0, 3],
[1, 2, 2, 1],
[2, 1, 1, 2],
[0, 3, 3, 0]])

In [13]: N = 1 # 0-based index

In [14]: A[N] # 2nd smallest indices
Out[14]: array([1, 2, 2, 1])

In [14]: A[-N-1] # 2nd largest indices
Out[14]: array([2, 1, 1, 2])
``````
-