I have an N x N sparse matrix in Matlab, that has cell values indexed by (r,c) pairs such that r and c are unique id's.

The problem is, that after converting this matrix into Python, all of the indices values are decremented by 1.

For example:

```
Before After
(210058,10326) = 1 (210057,10325) = 1
```

Currently, I am doing the following to counter this:

```
mat_contents = sparse.loadmat(filename)
G = mat_contents['G']
I,J = G.nonzero()
I += 1
J += 1
V = G.data
G = sparse.csr_matrix((V,(I,J)))
```

I have also tried using different options in `scipy.sparse.io.loadmat`

{matlab_compatible, mat_dtype}, but neither worked.

I am looking for a solution that will give me the same indices as the Matlab matrix. Solutions that do not require reconstructing the matrix would be ideal, but I am also curious how others have gotten around this problem.