# How to calculate the generalized inverse of a Sparse Matrix in scipy

I have a sparse matrix W, when I use `linalg.pinv(W)`, it throws some errors:

``````Traceback (most recent call last):
File "/Users/ad9075/PycharmProjects/bednmf/test.py", line 14, in testNmfRun
self.factor = factorization(self.V)
File "/Users/ad9075/PycharmProjects/bednmf/nmf.py", line 18, in factorization
W_trans = linalg.pinv(W)
File "/Library/Python/2.7/site-packages/scipy/linalg/basic.py", line 540, in pinv
b = np.identity(a.shape[0], dtype=a.dtype)
IndexError: tuple index out of range`
``````

But when I modify it to `linalg.pinv(W.todense())`, it works well. However, do I really need to convert the sparse matrix if I want to calculate the generaized inverse? Does anyone have ideas about this?

Thanks!

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The inverse (and generalized inverse) of a sparse matrix is usually dense, unless you can permute the rows and columns of the matrix so that it becomes block diagonal.

So your problem splits into two parts: (i) find a permutation that makes it block-diagonal, and (ii) compute the generalized inverse using linalg.pinv separately for each block. If your matrix is small enough, just converting it to a dense matrix first and then computing the pseudoinverse is also efficient.

If you on the other hand want to compute something like "A^{-1} x", using gmres or some other iterative routine may be a more efficient solution.

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