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I've got a dataset which needs to omit a few rows whilst preserving the order of the rows. My idea was to use a mask with a random number between 0 and the length of my dataset but I'm not sure how to setup a mask without shuffling the rows around i.e. a method similar to sampling a dataset.

Example: Dataset has 5 rows and 2 columns and I would like to remove a row at random.

Col1  Col2
   A     1
   B     2 
   C     5     
   D     4
   E     0

transforms to:

Col1  Col2
   A     1
   B     2   
   D     4
   E     0

with the third row (Col1='C') omitted by a random choice.

How should I go about this?

2 Answers 2

50

The following should work for you. Here I sample remove_n random row_ids from df's index. After that df.drop removes those rows from the data frame and returns the new subset of the old data frame.

import pandas as pd
import numpy as np
np.random.seed(10)

remove_n = 1
df = pd.DataFrame({"a":[1,2,3,4], "b":[5,6,7,8]})
drop_indices = np.random.choice(df.index, remove_n, replace=False)
df_subset = df.drop(drop_indices)

DataFrame df:

    a   b
0   1   5
1   2   6
2   3   7
3   4   8

DataFrame df_subset:

    a   b
0   1   5
1   2   6
3   4   8
4
  • Thanks for your solution. A slight correction to your solution is to let the dataframe equal the dropped indices dataframe i.e. last line is df = df.drop(drop_indices). It works well after this change.
    – Black
    Commented Feb 17, 2015 at 8:35
  • @Black, thanks for the feedback. I admit that my first version was not as clear as it could be. I have now explicitly saved the output of df.drop to a variable.
    – cel
    Commented Feb 17, 2015 at 9:47
  • You could also use df = df.drop(numpy.random.randint(number_of_rows_you_want_to_drop). This preserves the order but assumes an integer index.
    – mnky9800n
    Commented Aug 15, 2016 at 16:02
  • 2
    @mnky9800n randint does replacement=True, so that doesn't work
    – FooBar
    Commented Sep 25, 2016 at 13:04
0

We could sample the frame and sort the index afterwards.

n_remove = 2
df1 = df.sample(n=len(df)-n_remove).sort_index()

Another way is to sort the randomly chosen indices and filter.

keep_idx = np.random.default_rng().choice(len(df), replace=False, size=len(df)-n_remove)
keep_idx.sort()

df1 = df.take(keep_idx)

res

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