I've looked at the Sklearn stratified sampling docs as well as the pandas docs and also Stratified samples from Pandas and sklearn stratified sampling based on a column but they do not address this issue.

Im looking for a fast pandas/sklearn/numpy way to generate stratified samples of size n from a dataset. However, for rows with less than the specified sampling number, it should take all of the entries.

Concrete example:

enter image description here

Thank you! :)


Use min when passing the number to sample. Consider the dataframe df

df = pd.DataFrame(dict(
        A=[1, 1, 1, 2, 2, 2, 2, 3, 4, 4],

df.groupby('A', group_keys=False).apply(lambda x: x.sample(min(len(x), 2)))

   A  B
1  1  1
2  1  2
3  2  3
6  2  6
7  3  7
9  4  9
8  4  8
  • 4
    @piRSquared, let's say I have a df with 1M rows, I want to sample 10k of it, with at least 10 samples from each user_id, how would you approach it?
    – joddm
    Mar 8 '19 at 12:47
  • @whitfa still works for me, and the linked change shouldn't impact it at all. What version of pandas are you using? I'm using 0.25
    – piRSquared
    Sep 19 '19 at 15:08
  • Apologies @piRSquared, looks like I was mistaken! I will delete my original comment.
    – whitfa
    Sep 23 '19 at 9:27
  • When my grouping column has high cardinality this solution is quite slow. Which I guess makes sense. Anyways, can you think of a way to speed it up in scenarios like this? Jun 16 '21 at 7:43

Extending the groupby answer, we can make sure that sample is balanced. To do so, when for all classes the number of samples is >= n_samples, we can just take n_samples for all classes (previous answer). When minority class contains < n_samples, we can take the number of samples for all classes to be the same as of minority class.

def stratified_sample_df(df, col, n_samples):
    n = min(n_samples, df[col].value_counts().min())
    df_ = df.groupby(col).apply(lambda x: x.sample(n))
    df_.index = df_.index.droplevel(0)
    return df_
  • 5
    An explanation, what the posted code does and how this addresses the problem in the question, rarely fails to improve an answer.
    – MBT
    Dec 4 '18 at 16:18

the following sample a total of N row where each group appear in its original proportion to the nearest integer, then shuffle and reset the index using:

df = pd.DataFrame(dict(
    A=[1, 1, 1, 1, 1, 1, 1, 2, 2, 2, 2, 2, 2, 3, 3, 4, 4, 4, 4, 4],

Short and sweet:

df.sample(n=N, weights='A', random_state=1).reset_index(drop=True)

Long version

df.groupby('A', group_keys=False).apply(lambda x: x.sample(int(np.rint(N*len(x)/len(df))))).sample(frac=1).reset_index(drop=True)
  • 8
    There is an issue with the short version, it is not keeping the origin proportions: it doesn't really make sense to use the parameter weights = the category column, e.g. it could a string. If you really want to use df.sample, you need to compute an additional column equal to the frequency of the category column. But the long version works!
    – steco
    Jul 12 '19 at 9:43
  • Short version doesn't work for me for binary data, e.g. df = pd.DataFrame({'A': [np.random.randint(0, 2) for _ in range(100)]})
    – npit
    Nov 30 '21 at 16:20
  • Will not work if the column A is not numeric.
    – hafiz031
    Dec 21 '21 at 6:41

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