# SciPy NumPy and SciKit-learn , create a sparse matrix

I'm currently trying to classify text. My dataset is too big and as suggested here, I need to use a sparse matrix. My question is now, what is the right way to add an element to a sparse matrix? Let's say for example I have a matrix X which is my input .

``````X = np.random.randint(2, size=(6, 100))
``````

Now this matrix X looks like an ndarray of an ndarray (or something like that).

If I do

``````X2 = csr_matrix(X)
``````

I have the sparse matrix, but how can I add another element to the sparce matrix ? for example this dense element: [1,0,0,0,1,1,1,0,...,0,1,0] to a sparse vector, how do I add it to the sparse input matrix ?

(btw, I'm very new at python, scipy,numpy,scikit ... everything)

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You should really read this: scikit-learn.org/dev/auto_examples/… –  zenpoy Dec 6 '12 at 11:11
This is my second day working with python, that's a bit over the top for a second day to read. I found that too btw –  Ojtwist Dec 6 '12 at 11:13
Some things simply take their time. Maybe you should invest some time into doing some tutorials on Python, Numpy, and Scipy. For example, in the answer in the other question I pointed you to some links, and zenpoy gave you another one. I assume you didn't read those links, since you posted this question mere minutes after I answered the other one. –  HerrKaputt Dec 6 '12 at 11:16
I did read those, I even made a dummy example which works. Though the updating of the sparse matrix was not something I could find. If you don't know, I don't expect you to answer. –  Ojtwist Dec 6 '12 at 11:20
@Ojtwist - You tagged your question under sklearn, so these are the answers you get. if you just asked how to concatenate two `csr_matrix`'s you would get totally different answers... –  zenpoy Dec 6 '12 at 12:01
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Regarding your question - I'm sure there are many ways to concatenate two sparse matrices (btw this is what you should look for in google for other ways of doing it), here is one, but you'll have to convert from csr_matrix to `coo_matrix` which is anther type of sparse matrix: Is there an efficient way of concatenating scipy.sparse matrices?.
EDIT: When concatenating two matrices (or a matrix and an array which is a 1 dimenesional matrix) the general idea is to concatenate `X1.data` and `X2.data` and manipulate their `indices` and `indptr`s (or `row` and `col` in case of `coo_matrix`) to point to the correct places. Some sparse representations are better for specific operations and more complex for other operations, you should read about `csr_matrix` and see if this is the best representation. But I really urge you to start from those tutorials I posted above.
If you want to fit an SVM to a really large set of data, then `SGDClassifier` is even better. Under default settings, it approximates a linear SVM. –  larsmans Dec 8 '12 at 12:22