3

How can you slice a numpy array by column, and exclude a particular row?

Imagine you have a numpy array where the first column serves as an index as to a 'player', and the next columns are the players scores at different games. How can you return the scores for a game, whilst excluding one player.

For example:

[0  0  0  0
 1  2  1  1 
 2 -6  0  2
 3  4  1  3]

If you want to return the first score (column 1), you would do:

>>score[:,1]
[0,2,-6,4]

But how can you exclude a player/row? If that player/row 3, how do you get:

[0,2,-6]

Or, if that player/row 1, how do you get:

[0,-6, 4]

2 Answers 2

6

You can just pass the players that you want to include as a list to the first index of score like this:

>>> import numpy as np
>>> score = np.array([
... [0,0,0,0],
... [1,2,1,1],
... [2,-6,0,2],
... [3,4,1,3]
... ])
>>> players_to_include = [0,2,3]
>>> score[players_to_include, 1]
array([ 0, -6,  4])

This will get you only player [0,2,3]'s score.

To generalize, you can do:

>>> players = list(xrange(np.size(score, 0)))
>>> players
[0, 1, 2, 3]
>>> excludes = [2,3]
>>> players_to_include = [p for p in players if p not in excludes]
>>> players_to_include
[0, 1]
>>> score[players_to_include, 1]
array([0, 2])
4

You can enter the range of requested rows as a list, for example:

score[ range(2) + [4], 1]

For a more general predicate function p(x) = 1 if x is a good row, you can do:

score [ [x for x in range(score.shape[0]) if p(x)], 1]
2
  • 2
    Nope. score[ [0,2], 1] is completely legal.
    – Guy Adini
    Sep 1, 2012 at 17:43
  • Note that you can also just index with score[[p(x) for x in range(..)], 1], since numpy allows boolean indexing like that.
    – huon
    Sep 1, 2012 at 20:26

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.