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I'm new to Python and could you help me about some basic sparse matrix operation:

  1. How to extract a dense row vector from a sparse matrix without make the whole matrix dense beforehand? coo_matrix.getrow() only returns a sparse representation

  2. How to extract a proportion of rows (say, 80%) randomly from a sparse matrix? I need to use them as training data and the proportion left as test data.

Thanks in advance!

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1 Answer 1

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  1. coo_matrix.getrow().todense()
  2. Use a different sparse representation that supports slicing, for example csr_matrix. For sparse matrix A, A[i] will give the ith row.

For example:

In [9]: from random import sample

In [10]: A = csr_matrix(...)

In [11]: n = A.shape[0]

In [12]: indices = sample(range(n), 4*n/5)

In [13]: A[indices].todense()
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