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I can't find more info about scipy.sparse indexing except SciPy v0.11 Reference Guide, which says that

The lil_matrix class supports basic slicing and fancy indexing with a similar syntax to NumPy arrays.
. I have read numpy document about index, but I didn't understand it clearly, for example,

Asp = sparse.lil_matrix((3,3))
Asp.setdiag(zeros(3))
Asp[0, 1:3] = 10
print Asp.todense()

1. why the output is

[[  0.  10.  10.]
 [  0.   0.   0.]
 [  0.   0.   0.]]

what does [0,1:3] meaning? if I use

Asp[0, 1:2,3] = 10

there's a error:

IndexError: invalid index
, I don't know the reason.

2.what's the fastest way to get all non-zero values for each row?

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2 Answers 2

up vote 3 down vote accepted

For your second question, use the nonzero() method. I had to dig through the source to find it, since I couldn't find it in any of the reference documentation.

def nonzero(self):
    """nonzero indices

    Returns a tuple of arrays (row,col) containing the indices
    of the non-zero elements of the matrix.

    Examples
    --------
    >>> from scipy.sparse import csr_matrix
    >>> A = csr_matrix([[1,2,0],[0,0,3],[4,0,5]])
    >>> A.nonzero()
    (array([0, 0, 1, 2, 2]), array([0, 1, 2, 0, 2]))

    """
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thank you so much, I'll look at it –  user1687717 Jan 17 '13 at 5:48
    
    
@Jaime, very nice. Odd that I couldn't find that it's a method available to scipy.sparse matrixes, as well, but maybe that's assumed? –  ford Feb 19 '13 at 16:45
    
@fizzisist MY bad, I should read things with more care... A lot of the sparse matrix methods are listed, with very little documentation, in the Methods section of the corresponding sparse matrix class documentation. If you scroll down here, you will get to it, and nonzero is part of the list, linking to this page that is not linked elsewhere that I know of, so definitely hard to find. –  Jaime Feb 19 '13 at 16:53

what does [0,1:3] mean?

That means: row 0, elements 1 to 3 (exclusive). Since Numpy and Scipy use zero-based indices, row 0 is the first row and 1:3 denotes the first and second column.

Asp[0, 1:2,3] is invalid because you've got three indices, 0, 1:2 and 3. Matrices only have two axes.

This is all standard Numpy stuff; read any good tutorial on that package.

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thank you. could you tell me what's the fastest way to get all non-zero values for each row? –  user1687717 Jan 17 '13 at 4:13

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