(This question relates to "populate a Pandas SparseDataFrame from a SciPy Sparse Matrix". I want to populate a SparseDataFrame from a scipy.sparse.coo_matrix (specifically) The mentioned question is for a different SciPy Sparse Matrix (csr)... So here it goes...)

I noticed Pandas now has support for Sparse Matrices and Arrays. Currently, I create DataFrame()s like this:

return DataFrame(matrix.toarray(), columns=features, index=observations)

Is there a way to create a SparseDataFrame() with a scipy.sparse.coo_matrix() or coo_matrix()? Converting to dense format kills RAM badly...!



A convenience method SparseSeries.from_coo() is implemented for creating a SparseSeries from a scipy.sparse.coo_matrix.

Within scipy.sparse there are methods that convert the data forms to each other. .tocoo, .tocsc, etc. So you can use which ever form is best for a particular operation.

For going the other way, I've answered

Pandas sparse dataFrame to sparse matrix, without generating a dense matrix in memory

Your linked answer from 2013 iterates by row - using toarray to make the row dense. I haven't looked at what the pandas from_coo does.

A more recent SO question on pandas sparse

non-NDFFrame object error using pandas.SparseSeries.from_coo() function

From https://github.com/pydata/pandas/blob/master/pandas/sparse/scipy_sparse.py

def _coo_to_sparse_series(A, dense_index=False):
    """ Convert a scipy.sparse.coo_matrix to a SparseSeries.
    Use the defaults given in the SparseSeries constructor. """
    s = Series(A.data, MultiIndex.from_arrays((A.row, A.col)))
    s = s.sort_index()
    s = s.to_sparse()  # TODO: specify kind?
    # ...
    return s

In effect it takes the same data, i, j used to build a coo matrix, makes a series, sorts it, and turns it into a sparse series.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.