This is a Python module to employ block randomization using pandas. Mainly thought with RCTs in mind, it also works for any other scenario in where you would like to randomly allocate treatment within blocks or strata.
pip install stochatreat
Single cluster:
from stochatreat import stochatreat
import numpy as np
import pandas as pd
# make 1000 households in 5 different neighborhoods.
np.random.seed(42)
df = pd.DataFrame(data={'id': list(range(1000)),
'nhood': np.random.randint(1, 6, size=1000)})
# randomly assign treatments by neighborhoods.
treats = stochatreat(data=df, # your dataframe
block_cols='nhood', # the blocking variable
treats=2, # including control
idx_col='id', # the unique id column
random_state=42)
# merge back with original data
df = df.merge(treats, how='left', on='id')
# check for allocations
df.groupby('nhood')['treat'].value_counts().unstack()
# previous code should return this
treat 0.0 1.0
nhood
1 105 105
2 95 95
3 95 95
4 103 103
5 102 102
Multiple clusters and treatment probabilities:
from stochatreat import stochatreat
import numpy as np
import pandas as pd
# make 1000 households in 5 different neighborhoods, with a dummy indicator
np.random.seed(42)
df = pd.DataFrame(data={'id': list(range(1000)),
'nhood': np.random.randint(1, 6, size=1000),
'dummy': np.random.randint(0, 2, size=1000)})
# randomly assign treatments by neighborhoods and dummy status.
treats = stochatreat(data=df,
block_cols=['nhood', 'dummy'],
treats=2,
probs=[1/3, 2/3],
idx_col='id',
random_state=42)
# merge back with original data
df = df.merge(treats, how='left', on='id')
# check for allocations
df.groupby(['nhood', 'dummy'])['treat'].value_counts().unstack()
# previous code should return this
treat 0.0 1.0
nhood dummy
1 0 38 74
1 33 65
2 0 35 69
1 29 57
3 0 30 58
1 34 68
4 0 36 72
1 33 65
5 0 34 67
1 35 68
stochatreat
is totally inspired by Alvaro Carril's fantastic Stata package:randtreat
, which was published in The Stata Journal 🎺.- David McKenzie's fantastic post (and blog) about running RCTs for the World Bank.
- In Pursuit of Balance: Randomization in Practice in Development Field Experiments. Bruhn, McKenzie, 2009