CausalNLP is a practical toolkit for causal inference with text as treatment, outcome, or “controlled-for” variable.
- Low-code causal inference in as little as two commands
- Out-of-the-box support for using text as a “controlled-for” variable (e.g., confounder)
- Built-in Autocoder that transforms raw text into useful variables for causal analyses (e.g., topics, sentiment, emotion, etc.)
- Sensitivity analysis to assess robustness of causal estimates
- Quick and simple key driver analysis to yield clues on potential drivers of an outcome based on predictive power, correlations, etc.
- Can easily be applied to “traditional” tabular datasets without text (i.e., datasets with only numerical and categorical variables)
- Includes an experimental PyTorch implementation of CausalBert by Veitch, Sridar, and Blei (based on reference implementation by R. Pryzant)
pip install -U pip
pip install causalnlp
NOTE: On Python 3.6.x, if you get a
RuntimeError: Python version >= 3.7 required
, try ensuring NumPy is
installed before CausalNLP (e.g., pip install numpy==1.18.5
).
To try out the examples yourself:
import pandas as pd
df = pd.read_csv('sample_data/music_seed50.tsv', sep='\t', on_bad_lines='skip')
The file music_seed50.tsv
is a semi-simulated dataset from
here. Columns of relevance
include: - Y_sim
: outcome, where 1 means product was clicked and 0
means not. - text
: raw text of review - rating
: rating associated
with review (1 through 5) - T_true
: 0 means rating less than 3, 1
means rating of 5, where T_true
affects the outcome Y_sim
. - T_ac
:
an approximation of true review sentiment (T_true
) created with
Autocoder from raw
review text - C_true
:confounding categorical variable (1=audio CD,
0=other)
We’ll pretend the true sentiment (i.e., review rating and T_true
) is
hidden and only use T_ac
as the treatment variable.
Using the text_col
parameter, we include the raw review text as
another “controlled-for” variable.
from causalnlp import CausalInferenceModel
from lightgbm import LGBMClassifier
cm = CausalInferenceModel(df,
metalearner_type='t-learner', learner=LGBMClassifier(num_leaves=500),
treatment_col='T_ac', outcome_col='Y_sim', text_col='text',
include_cols=['C_true'])
cm.fit()
outcome column (categorical): Y_sim
treatment column: T_ac
numerical/categorical covariates: ['C_true']
text covariate: text
preprocess time: 1.1179866790771484 sec
start fitting causal inference model
time to fit causal inference model: 10.361494302749634 sec
CausalNLP supports estimation of heterogeneous treatment effects (i.e., how causal impacts vary across observations, which could be documents, emails, posts, individuals, or organizations).
We will first calculate the overall average treatment effect (or ATE), which shows that a positive review increases the probability of a click by 13 percentage points in this dataset.
Average Treatment Effect (or ATE):
print( cm.estimate_ate() )
{'ate': 0.1309311542209525}
Conditional Average Treatment Effect (or CATE): reviews that mention the word “toddler”:
print( cm.estimate_ate(df['text'].str.contains('toddler')) )
{'ate': 0.15559234254638685}
Individualized Treatment Effects (or ITE):
test_df = pd.DataFrame({'T_ac' : [1], 'C_true' : [1],
'text' : ['I never bought this album, but I love his music and will soon!']})
effect = cm.predict(test_df)
print(effect)
[[0.80538201]]
Model Interpretability:
print( cm.interpret(plot=False)[1][:10] )
v_music 0.079042
v_cd 0.066838
v_album 0.055168
v_like 0.040784
v_love 0.040635
C_true 0.039949
v_just 0.035671
v_song 0.035362
v_great 0.029918
v_heard 0.028373
dtype: float64
Features with the v_
prefix are word features. C_true
is the
categorical variable indicating whether or not the product is a CD.
Despite the “NLP” in CausalNLP, the library can be used for causal inference on data without text (e.g., only numerical and categorical variables). See the examples for more info.
API documentation and additional usage examples are available at: https://amaiya.github.io/causalnlp/
Please cite the following paper when using CausalNLP in your work:
@article{maiya2021causalnlp,
title={CausalNLP: A Practical Toolkit for Causal Inference with Text},
author={Arun S. Maiya},
year={2021},
eprint={2106.08043},
archivePrefix={arXiv},
primaryClass={cs.CL},
journal={arXiv preprint arXiv:2106.08043},
}