# How do I transform a “SciPy sparse matrix” to a “NumPy matrix”?

I am using a python function called "incidence_matrix(G)", which returns the incident matrix of graph. It is from Networkx package. The problem that I am facing is the return type of this function is "Scipy Sparse Matrix". I need to have the Incident matrix in the format of numpy matrix or array. I was wondering if there is any easy way of doing that or not? Or is there any built-in function that can do this transformation for me or not?

Thanks

• Have you tried simply `numpy.array(<your_matrix_object>)`? – farenorth Oct 26 '14 at 18:43
• Actually yes, it works and gives you an array. I was looking for a way to directly (using python functions) get the matrix having all zeros and ones. But thank you for that, I think finally I will go with the array if I could not find anything better. – Mr.Boy Oct 26 '14 at 18:49
• If you want a matrix, then use `numpy.matrix(<your_matrix_object>)`. – farenorth Oct 26 '14 at 18:52
• What about `numpy.matrix(numpy.array(<your_matrix_object>))`? – farenorth Oct 26 '14 at 19:01
• OK. I think this is what you want `numpy.matrix(<your_matrix_object>.toarray())`. – farenorth Oct 26 '14 at 19:04

The `scipy.sparse.*_matrix` has several useful methods, for example, if `a` is e.g. `scipy.sparse.csr_matrix`:

• `a.toarray()` or `a.A` - Return a dense ndarray representation of this matrix. (`numpy.array`, recommended)
• `a.todense()` or `a.M` - Return a dense matrix representation of this matrix. (`numpy.matrix`)
• Those two attributes have short aliases: if your sparse matrix is `a`, then `a.M` returns a dense numpy matrix object, and `a.A` returns a dense numpy array object. Unless you have very good reasons for it (and you probably don't!), stick to numpy arrays, i.e. `a.A`, and stay away from numpy matrix. – Jaime Oct 27 '14 at 0:42
• @Jaime Oh yes, included that in the answer, thanks! – sebix Oct 27 '14 at 7:13

The simplest way is to call the todense() method on the data:

``````In [1]: import networkx as nx

In [2]: G = nx.Graph([(1,2)])

In [3]: nx.incidence_matrix(G)
Out[3]:
<2x1 sparse matrix of type '<type 'numpy.float64'>'
with 2 stored elements in Compressed Sparse Column format>

In [4]: nx.incidence_matrix(G).todense()
Out[4]:
matrix([[ 1.],
[ 1.]])

In [5]: nx.incidence_matrix(G).todense().A
Out[5]:
array([[ 1.],
[ 1.]])
``````

I found that in the case of csr matrices, `todense()` and `toarray()` simply wrapped the tuples rather than producing a ndarray formatted version of the data in matrix form. This was unusable for the skmultilearn classifiers I'm training.

I translated it to a lil matrix- a format numpy can parse accurately, and then ran `toarray()` on that:

``````sparse.lil_matrix(<my-sparse_matrix>).toarray()
``````