Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

In Numpy, ix_() is used to grab rows and columns of a matrix, but it doesn't seem to work with sparse matrices. For instance, this code works because it uses a dense matrix:

>>> import numpy as np
>>> x = np.mat([[1,0,3],[0,4,5],[7,8,0]])
>>> print x
[[1 0 3]
 [0 4 5]
 [7 8 0]]
>>> print x[np.ix_([0,2],[0,2])]
[[1 3]
 [7 0]]

I used ix_() to index the elements corresponding with the 0th and 2nd rows and columns which gives the 4 corners of the matrix.

The problem is that ix_ doesn't seem to work with sparse matrices. Continuing from the previous code, I try the following:

>>> import scipy.sparse as sparse
>>> xspar = sparse.csr_matrix(x)
>>> print xspar
  (0, 0) 1
  (0, 2) 3
  (1, 1) 4
  (1, 2) 5
  (2, 0) 7
  (2, 1) 8
>>> print xspar[np.ix_([0,2],[0,2])]

and get a huge error message saying there is this exception:

  File "C:\Python26\lib\site-packages\scipy\sparse\compressed.py", line 138, in check_format
    raise ValueError('data, indices, and indptr should be rank 1')
ValueError: data, indices, and indptr should be rank 1

I have tried this with the other sparse matrix formats provided by SciPy, but none of them seem to work with ix_() though they don't all raise the same exception.

The example I gave used a matrix that wasn't very big or very sparse, but the ones I am dealing with are quite sparse and potentially very large so it doesn't seem prudent to just list off the elements one by one.

Does anyone know a (hopefully easy) way to do this sort of indexing with sparse matrices in SciPy or is this feature just not built into these sparse matrices?

share|improve this question

1 Answer 1

up vote 2 down vote accepted

Try this instead:

>>> print xspar
  (0, 0) 1
  (0, 2) 3
  (1, 1) 4
  (1, 2) 5
  (2, 0) 7
  (2, 1) 8
>>> print xspar[[[0],[2]],[0,2]]
  (0, 0) 1
  (0, 2) 3
  (2, 0) 7

Note the difference with this:

>>> print xspar[[0,2],[0,2]]
  [[1 0]]
share|improve this answer
    
Works like a charm, thanks! Though it appears to work for csc and csr matrices, but not lil matrices - that's enough for me. –  Justin Peel Feb 25 '10 at 23:43
    
You're welcome! –  Steve Tjoa Feb 25 '10 at 23:51
    
It's a shame that the sparse syntax for slicing differs ever so slightly from the dense syntax. xspar[[[0],[2]],[0,2]] vs xdense[[[0],[2]],[[0,2]]] –  gabe Jan 11 '13 at 18:28
    
How can this be generalized to an arbitrary series of indices? E.g. if one would use np.ix_(A,B) for np.arrays A and B? –  zhermes Apr 23 '13 at 4:41
    
scipy 1.3 has improved the advanced indexing of sparse matricies. –  hpaulj Nov 26 '13 at 5:50

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

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