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?