A Python package for inferring causal effects from observational data.
Causal inference analysis enables estimating the causal effect of an intervention on some outcome from real-world non-experimental observational data.
This package provides a suite of causal methods, under a unified scikit-learn-inspired API. It implements meta-algorithms that allow plugging in arbitrarily complex machine learning models. This modular approach supports highly-flexible causal modelling. The fit-and-predict-like API makes it possible to train on one set of examples and estimate an effect on the other (out-of-bag), which allows for a more "honest"1 effect estimation.
The package also includes an evaluation suite. Since most causal-models utilize machine learning models internally, we can diagnose poor-performing models by re-interpreting known ML evaluations from a causal perspective.
If you use the package, please consider citing Shimoni et al., 2019:
1 Borrowing Wager & Athey terminology of avoiding overfit.
pip install causallib
The package is imported using the name causallib
.
Each causal model requires an internal machine-learning model.
causallib
supports any model that has a sklearn-like fit-predict API
(note some models might require a predict_proba
implementation).
For example:
from sklearn.linear_model import LogisticRegression
from causallib.estimation import IPW
from causallib.datasets import load_nhefs
data = load_nhefs()
ipw = IPW(LogisticRegression())
ipw.fit(data.X, data.a)
potential_outcomes = ipw.estimate_population_outcome(data.X, data.a, data.y)
effect = ipw.estimate_effect(potential_outcomes[1], potential_outcomes[0])
Comprehensive Jupyter Notebooks examples can be found in the examples directory.
We use the Slack workspace at causallib.slack.com for informal communication. We encourage you to ask questions regarding causal-inference modelling or usage of causallib that don't necessarily merit opening an issue on Github.
Use this invite link to join causallib on Slack.
Some key points on how we address causal-inference estimation
Causal effect may be the desired outcome. However, every effect is defined by two potential (counterfactual) outcomes. We adopt this two-step approach by separating the effect-estimating step from the potential-outcome-prediction step. A beneficial consequence to this approach is that it better supports multi-treatment problems where "effect" is not well-defined.
The causal inference literature devotes special attention to the population
on which the effect is estimated on.
For example, ATE (average treatment effect on the entire sample),
ATT (average treatment effect on the treated), etc.
By allowing out-of-bag estimation, we leave this specification to the user.
For example, ATE is achieved by model.estimate_population_outcome(X, a)
and ATT is done by stratifying on the treated: model.estimate_population_outcome(X.loc[a==1], a.loc[a==1])
We distinguish between two types of models:
One of the most important steps in causal inference analysis is to have proper selection on both dimensions of the data to avoid introducing bias:
This is a place where domain expert knowledge is required and cannot be fully and truly automated by algorithms. This package assumes that the data provided to the model fit the criteria. However, filtering can be applied in real-time using a scikit-learn pipeline estimator that chains preprocessing steps (that can filter rows and select columns) with a causal model at the end.