I'm working turning a list of records with two columns (A and B) into a matrix representation. I have been using the pivot function within pandas, but the result ends up being fairly large. Does pandas support pivoting into a sparse format? I know I can pivot it and then turn it into some kind of sparse representation, but isn't as elegant as I would like. My end goal is to use it as the input for a predictive model.

Alternatively, is there some kind of sparse pivot capability outside of pandas?

edit: here is an example of a non-sparse pivot

import pandas as pd


  person thing  count
0     me     a      1
1    you     a      1
2    him     b      1
3    you     c      1
4    him     d      1
5     me     d      1


thing       a   b   c   d
him       NaN   1 NaN   1
me          1 NaN NaN   1
you         1 NaN   1 NaN

This creates a matrix that could contain all possible combinations of persons and things, but it is not sparse.


Sparse matrices take up less space because they can imply things like NaN or 0. If I have a very large data set, this pivoting function can generate a matrix that should be sparse due to the large number of NaNs or 0s. I was hoping that I could save a lot of space/memory by generating something that was sparse right off the bat rather than creating a dense matrix and then converting it to sparse.

  • 1
    Could you provide some sample input, output, code ? – Skorpeo Jul 27 '15 at 21:11
  • what does sparse mean? – AZhao Jul 27 '15 at 21:14
  • @AZhao It's a mathematical term en.m.wikipedia.org/wiki/Sparse_matrix – Alex Taylor Jul 27 '15 at 22:01
  • Just added an example and an explanation. Thanks! – neelshiv Jul 28 '15 at 12:22
  • Pivot tables are just ways to view your original data, which is already sparse (other than converting person and thing to integers) – Alexander Jul 29 '15 at 16:33

The answer posted previously by @khammel was useful, but unfortunately no longer works due to changes in pandas and Python. The following should produce the same output:

from scipy.sparse import csr_matrix
from pandas.api.types import CategoricalDtype

person_c = CategoricalDtype(sorted(frame.person.unique()), ordered=True)
thing_c = CategoricalDtype(sorted(frame.thing.unique()), ordered=True)

row = frame.person.astype(person_c).cat.codes
col = frame.thing.astype(thing_c).cat.codes
sparse_matrix = csr_matrix((frame["count"], (row, col)), \
                           shape=(person_c.categories.size, thing_c.categories.size))

>>> sparse_matrix
<3x4 sparse matrix of type '<class 'numpy.int64'>'
     with 6 stored elements in Compressed Sparse Row format>

>>> sparse_matrix.todense()
matrix([[0, 1, 0, 1],
        [1, 0, 0, 1],
        [1, 0, 1, 0]], dtype=int64)

dfs = pd.SparseDataFrame(sparse_matrix, \
                         index=person_c.categories, \
                         columns=thing_c.categories, \
>>> dfs
        a   b   c   d
 him    0   1   0   1
  me    1   0   0   1
 you    1   0   1   0

The main changes were:

  • .astype() no longer accepts "categorical". You have to create a CategoricalDtype object.
  • sort() doesn't work anymore

Other changes were more superficial:

  • using the category sizes instead of a length of the uniqued Series objects, just because I didn't want to make another object unnecessarily
  • the data input for the csr_matrix (frame["count"]) doesn't need to be a list object
  • pandas SparseDataFrame accepts a scipy.sparse object directly now
| improve this answer | |

Here is a method that creates a sparse scipy matrix based on data and indices of person and thing. person_u and thing_u are lists representing the unique entries for your rows and columns of pivot you want to create. Note: this assumes that your count column already has the value you want in it.

from scipy.sparse import csr_matrix

person_u = list(sort(frame.person.unique()))
thing_u = list(sort(frame.thing.unique()))

data = frame['count'].tolist()
row = frame.person.astype('category', categories=person_u).cat.codes
col = frame.thing.astype('category', categories=thing_u).cat.codes
sparse_matrix = csr_matrix((data, (row, col)), shape=(len(person_u), len(thing_u)))

>>> sparse_matrix 
<3x4 sparse matrix of type '<type 'numpy.int64'>'
    with 6 stored elements in Compressed Sparse Row format>

>>> sparse_matrix.todense()

matrix([[0, 1, 0, 1],
        [1, 0, 0, 1],
        [1, 0, 1, 0]])

Based on your original question, the scipy sparse matrix should be sufficient for your needs, but should you wish to have a sparse dataframe you can do the following:

dfs=pd.SparseDataFrame([ pd.SparseSeries(sparse_matrix[i].toarray().ravel(), fill_value=0) 
                              for i in np.arange(sparse_matrix.shape[0]) ], index=person_u, columns=thing_u, default_fill_value=0)

>>> dfs
     a  b  c  d
him  0  1  0  1
me   1  0  0  1
you  1  0  1  0

>>> type(dfs)
| improve this answer | |
  • 1
    Thanks! I was really hoping to avoid creating a dense matrix and then using to_sparse() because doing so will still require the amount of memory needed for the dense matrix at some point or another. I feel like there are other Pandas functions that can output sparse data, but maybe I'm wrong or maybe I have to look elsewhere. – neelshiv Jul 28 '15 at 14:53
  • Very interesting. My plan was to try something like this if there wasn't a solution out there, but I would have needed to learn a bit more about scipy sparse matrices first. Now I can learn from your code. Thanks! – neelshiv Jul 28 '15 at 18:07
  • why do you sort the list, e.g. person_u = list(sort(frame.person.unique()))..it seems that the final matrix (sparse_matrix) not corresponds to the dataframe – kitchenprinzessin Nov 30 '17 at 9:10
  • Thank you, it helped – paveltr Jan 17 '18 at 8:50

I had a similar problem and I stumbled over this post. The only difference was that that I had two columns in the DataFrame that define the "row dimension" (i) of the output matrix. I thought this might be an interesting generalisation, I used the grouper:

# function
import pandas as pd

from scipy.sparse import csr_matrix

def df_to_sm(data, vars_i, vars_j):
    grpr_i = data.groupby(vars_i).grouper

    idx_i = grpr_i.group_info[0]

    grpr_j = data.groupby(vars_j).grouper

    idx_j = grpr_j.group_info[0]

    data_sm = csr_matrix((data['val'].values, (idx_i, idx_j)),
                         shape=(grpr_i.ngroups, grpr_j.ngroups))

    return data_sm, grpr_i, grpr_j

# example
data = pd.DataFrame({'var_i_1' : ['a1', 'a1', 'a1', 'a2', 'a2', 'a3'],
                     'var_i_2' : ['b2', 'b1', 'b1', 'b1', 'b1', 'b4'],
                     'var_j_1' : ['c2', 'c3', 'c2', 'c1', 'c2', 'c3'],
                     'val' : [1, 2, 3, 4, 5, 6]})

data_sm, _, _ = df_to_sm(data, ['var_i_1', 'var_i_2'], ['var_j_1'])

| improve this answer | |
  • Nice! I'm not using sparse pivots at the moment, but I'll be sure to check this out. Thanks for contributing! – neelshiv Jul 25 '16 at 15:13

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