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andrewtavis/causeinfer

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    Machine learning based causal inference/uplift in Python

    causeinfer is a Python package for estimating average and conditional average treatment effects using machine learning. The goal is to compile causal inference models both standard and advanced, as well as demonstrate their usage and efficacy - all this with the overarching ambition to help people learn causal inference techniques across business, medical, and socioeconomic fields. See the documentation for a full outline of the package including the available models and datasets.

    Contents

    Installation

    causeinfer can be downloaded from PyPI via pip or sourced directly from this repository:

    pip install causeinfer
    git clone https://github.com/andrewtavis/causeinfer.git
    cd causeinfer
    python setup.py install
    import causeinfer

    Application

    Standard Algorithms

    Two Model Approach

    Separate models for treatment and control groups are trained and combined to derive average treatment effects (Hansotia, 2002).

    from causeinfer.standard_algorithms.two_model import TwoModel
    from sklearn.ensemble import RandomForestClassifier, RandomForestRegressor
    
    tm_pred = TwoModel(
        treatment_model=RandomForestRegressor(**kwargs),
        control_model=RandomForestRegressor(**kwargs),
    )
    tm_pred.fit(X=X_train, y=y_train, w=w_train)
    
    # An array of predictions given a treatment and control model
    tm_preds = tm_pred.predict(X=X_test)
    
    tm_proba = TwoModel(
        treatment_model=RandomForestClassifier(**kwargs),
        control_model=RandomForestClassifier(**kwargs),
    )
    tm_proba.fit(X=X_train, y=y_train, w=w_train)
    
    # An array of predicted treatment class probabilities given models
    tm_probas = tm.predict_proba(X=X_test)

    Interaction Term Approach

    An interaction term between treatment and covariates is added to the data to allow for a basic single model application (Lo, 2002).

    from causeinfer.standard_algorithms.interaction_term import InteractionTerm
    from sklearn.ensemble import RandomForestClassifier, RandomForestRegressor
    
    it_pred = InteractionTerm(model=RandomForestRegressor(**kwargs))
    it_pred.fit(X=X_train, y=y_train, w=w_train)
    
    # An array of predictions given a treatment and control interaction term
    it_preds = it_pred.predict(X=X_test)
    
    it_proba = InteractionTerm(model=RandomForestClassifier(**kwargs))
    it_proba.fit(X=X_train, y=y_train, w=w_train)
    
    # An array of predicted treatment class probabilities given interaction terms
    it_probas = it_proba.predict_proba(X=X_test)

    Class Transformation Approaches

    Units are categorized into two or four classes to derive treatment effects from favorable class attributes (Lai, 2006; Kane, et al, 2014; Shaar, et al, 2016).

    # Binary Class Transformation
    from causeinfer.standard_algorithms.binary_transformation import BinaryTransformation
    from sklearn.ensemble import RandomForestClassifier
    
    bt = BinaryTransformation(model=RandomForestClassifier(**kwargs), regularize=True)
    bt.fit(X=X_train, y=y_train, w=w_train)
    
    # An array of predicted probabilities (P(Favorable Class), P(Unfavorable Class))
    bt_probas = bt.predict_proba(X=X_test)
    # Quaternary Class Transformation
    from causeinfer.standard_algorithms.quaternary_transformation import (
        QuaternaryTransformation,
    )
    from sklearn.ensemble import RandomForestClassifier
    
    qt = QuaternaryTransformation(model=RandomForestClassifier(**kwargs), regularize=True)
    qt.fit(X=X_train, y=y_train, w=w_train)
    
    # An array of predicted probabilities (P(Favorable Class), P(Unfavorable Class))
    qt_probas = qt.predict_proba(X=X_test)

    Reflective and Pessimistic Uplift

    Weighted versions of the binary class transformation approach that are meant to dampen the original model's inherently noisy results (Shaar, et al, 2016).

    # Reflective Uplift Transformation
    from causeinfer.standard_algorithms.reflective import ReflectiveUplift
    from sklearn.ensemble import RandomForestClassifier
    
    ru = ReflectiveUplift(model=RandomForestClassifier(**kwargs))
    ru.fit(X=X_train, y=y_train, w=w_train)
    
    # An array of predicted probabilities (P(Favorable Class), P(Unfavorable Class))
    ru_probas = ru.predict_proba(X=X_test)
    # Pessimistic Uplift Transformation
    from causeinfer.standard_algorithms.pessimistic import PessimisticUplift
    from sklearn.ensemble import RandomForestClassifier
    
    pu = PessimisticUplift(model=RandomForestClassifier(**kwargs))
    pu.fit(X=X_train, y=y_train, w=w_train)
    
    # An array of predicted probabilities (P(Favorable Class), P(Unfavorable Class))
    pu_probas = pu.predict_proba(X=X_test)

    Advanced Algorithms

    Models to Consider

    • Under consideration for inclusion in causeinfer:
      • Generalized Random Forest via the R/C++ grf - Athey, Tibshirani, and Wager (2019)
      • The X-Learner - Kunzel, et al (2019)
      • The R-Learner - Nie and Wager (2017)
      • Double Machine Learning - Chernozhukov, et al (2018)
      • Information Theory Trees/Forests - Soltys, et al (2015)

    Evaluation Methods

    Visualization Metrics and Coefficients

    Comparisons across stratified, ordered treatment response groups are used to derive model efficiency.

    from causeinfer.evaluation import plot_cum_gain, plot_qini
    
    visual_eval_dict = {
        "y_test": y_test,
        "w_test": w_test,
        "two_model": tm_effects,
        "interaction_term": it_effects,
        "binary_trans": bt_effects,
        "quaternary_trans": qt_effects,
    }
    
    df_visual_eval = pd.DataFrame(visual_eval_dict, columns=visual_eval_dict.keys())
    model_pred_cols = [
        col for col in visual_eval_dict.keys() if col not in ["y_test", "w_test"]
    ]
    fig, (ax1, ax2) = plt.subplots(ncols=2, sharey=False, figsize=(20, 5))
    
    plot_cum_effect(
        df=df_visual_eval,
        n=100,
        models=models,
        percent_of_pop=True,
        outcome_col="y_test",
        treatment_col="w_test",
        normalize=True,
        random_seed=42,
        axis=ax1,
        legend_metrics=True,
    )
    
    plot_qini(  # or plot_cum_gain
        df=df_visual_eval,
        n=100,
        models=models,
        percent_of_pop=True,
        outcome_col="y_test",
        treatment_col="w_test",
        normalize=True,
        random_seed=42,
        axis=ax2,
        legend_metrics=True,
    )

    Hillstrom Metrics

    Mayo PBC Metrics

    CMF Microfinance Metrics

    Iterated Model Variance Analysis

    Easily iterate models to derive their average effects and prediction variances. See a full example across all datasets and models in examples/model_iteration, with the results being shown below:

    TwoModel InteractionTerm BinaryTransformation QuaternaryTransformation ReflectiveUplift PessimisticUplift
    Hillstrom -5.4762 ± 13.589*** -5.047 ± 15.417*** 0.5178 ± 15.7252*** 0.7397 ± 14.7509*** 4.4872 ± 18.5918**** -6.0052 ± 17.936****
    Mayo PBC -0.145 ± 0.29 -0.1335 ± 0.4471 0.5542 ± 0.4268 0.5315 ± 0.4424 -0.8774 ± 0.233 0.1392 ± 0.3587
    CMF Microfinance 18.7289 ± 5.9138** 17.0616 ± 6.6993** nan nan nan nan

    Data and Examples

    Business Analytics

    from causeinfer.data import hillstrom
    
    hillstrom.download_hillstrom()
    data_hillstrom = hillstrom.load_hillstrom(
        user_file_path="datasets/hillstrom.csv", format_covariates=True, normalize=True
    )
    
    df = pd.DataFrame(
        data_hillstrom["dataset_full"], columns=data_hillstrom["dataset_full_names"]
    )

    Medical Trials

    from causeinfer.data import mayo_pbc
    
    mayo_pbc.download_mayo_pbc()
    data_mayo_pbc = mayo_pbc.load_mayo_pbc(
        user_file_path="datasets/mayo_pbc.text", format_covariates=True, normalize=True
    )
    
    df = pd.DataFrame(
        data_mayo_pbc["dataset_full"], columns=data_mayo_pbc["dataset_full_names"]
    )

    Socioeconomic Analysis

    from causeinfer.data import cmf_micro
    
    data_cmf_micro = cmf_micro.load_cmf_micro(
        user_file_path="datasets/cmf_micro", format_covariates=True, normalize=True
    )
    
    df = pd.DataFrame(
        data_cmf_micro["dataset_full"], columns=data_cmf_micro["dataset_full_names"]
    )

    To-Do

    Please see the contribution guidelines if you are interested in contributing to this project. Work that is in progress or could be implemented includes:

    Similar Projects

    Similar packages and modules to causeinfer

    Python

    Other Languages

    Data and Misc

    References

    List of referenced codes

    List of theoretical references

    Big Data and Machine Learning

    • Athey, S. (2017). Beyond prediction: Using big data for policy problems. Science, Vol. 355, No. 6324, February 3, 2017, pp. 483-485.
    • Athey, S. & Imbens, G. (2015). Machine Learning Methods for Estimating Heterogeneous Causal Effects. Draft version submitted April 5th, 2015, arXiv:1504.01132v1, pp. 1-25.
    • Athey, S. & Imbens, G. (2019). Machine Learning Methods That Economists Should Know About. Annual Review of Economics, Vol. 11, August 2019, pp. 685-725.
    • Chernozhukov, V. et al. (2018). Double/debiased machine learning for treatment and structural parameters. The Econometrics Journal, Vol. 21, No. 1, February 1, 2018, pp. C1–C68.
    • Mullainathan, S. & Spiess, J. (2017). Machine Learning: An Applied Econometric Approach. Journal of Economic Perspectives, Vol. 31, No. 2, Spring 2017, pp. 87-106.

    Causal Inference

    • Athey, S. & Imbens, G. (2017). The State of Applied Econometrics: Causality and Policy Evaluation. Journal of Economic Perspectives, Vol. 31, No. 2, Spring 2017, pp. 3-32.
    • Athey, S., Tibshirani, J. & Wager, S. (2019) Generalized random forests. The Annals of Statistics, Vol. 47, No. 2 (2019), pp. 1148-1178.
    • Athey, S. & Wager, S. (2019). Efficient Policy Learning. Draft version submitted on 9 Feb 2017, last revised 16 Sep 2019, arXiv:1702.02896v5, pp. 1-10.
    • Banerjee, A, et al. (2015) The Miracle of Microfinance? Evidence from a Randomized Evaluation. American Economic Journal: Applied Economics, Vol. 7, No. 1, January 1, 2015, pp. 22-53.
    • Ding, P. & Li, F. (2018). Causal Inference: A Missing Data Perspective. Statistical Science, Vol. 33, No. 2, 2018, pp. 214-237.
    • Farrell, M., Liang, T. & Misra S. (2018). Deep Neural Networks for Estimation and Inference: Application to Causal Effects and Other Semiparametric Estimands. Draft version submitted December 2018, arXiv:1809.09953, pp. 1-54.
    • Gutierrez, P. & Gérardy, JY. (2016). Causal Inference and Uplift Modeling: A review of the literature. JMLR: Workshop and Conference Proceedings 67, 2016, pp. 1–14.
    • Hitsch, G J. & Misra, S. (2018). Heterogeneous Treatment Effects and Optimal Targeting Policy Evaluation. January 28, 2018, Available at SSRN: ssrn.com/abstract=3111957 or dx.doi.org/10.2139/ssrn.3111957, pp. 1-64.
    • Powers, S. et al. (2018). Some methods for heterogeneous treatment effect estimation in high dimensions. Statistics in Medicine, Vol. 37, No. 11, May 20, 2018, pp. 1767-1787.
    • Rosenbaum, P. & Rubin, D. (1983). The central role of the propensity score in observational studies for causal effects. Biometrika, Vol. 70, pp. 41-55.
    • Sekhon, J. (2007). The Neyman-Rubin Model of Causal Inference and Estimation via Matching Methods. The Oxford Handbook of Political Methodology, Winter 2017, pp. 1-46.
    • Wager, S. & Athey, S. (2018). Estimation and Inference of Heterogeneous Treatment Effects using Random Forests. Journal of the American Statistical Association, Vol. 113, 2018 - Issue 523, pp. 1228-1242.

    Uplift

    • Devriendt, F. et al. (2018). A Literature Survey and Experimental Evaluation of the State-of-the-Art in Uplift Modeling: A Stepping Stone Toward the Development of Prescriptive Analytics. Big Data, Vol. 6, No. 1, March 1, 2018, pp. 1-29. Codes found at: data-lab.be/downloads.php.
    • Hansotia, B. & Rukstales, B. (2002). Incremental value modeling. Journal of Interactive Marketing, Vol. 16, No. 3, Summer 2002, pp. 35-46.
    • Haupt, J., Jacob, D., Gubela, R. & Lessmann, S. (2019). Affordable Uplift: Supervised Randomization in Controlled Experiments. Draft version submitted on October 1, 2019, arXiv:1910.00393v1, pp. 1-15.
    • Jaroszewicz, S. & Rzepakowski, P. (2014). Uplift modeling with survival data. Workshop on Health Informatics (HI-KDD) New York City, August 2014, pp. 1-8.
    • Jaśkowski, M. & Jaroszewicz, S. (2012). Uplift modeling for clinical trial data. In: ICML, 2012, Workshop on machine learning for clinical data analysis. Edinburgh, Scotland, June 2012, 1-8.
    • Kane, K., Lo, VSY. & Zheng, J. (2014). Mining for the truly responsive customers and prospects using true-lift modeling: Comparison of new and existing methods. Journal of Marketing Analytics, Vol. 2, No. 4, December 2014, pp 218–238.
    • Lai, L.Y.-T. (2006). Influential marketing: A new direct marketing strategy addressing the existence of voluntary buyers. Master of Science thesis, Simon Fraser University School of Computing Science, Burnaby, BC, Canada, pp. 1-68.
    • Lo, VSY. (2002). The true lift model: a novel data mining approach to response modeling in database marketing. SIGKDD Explor 4(2), pp. 78–86.
    • Lo, VSY. & Pachamanova, D. (2016). From predictive uplift modeling to prescriptive uplift analytics: A practical approach to treatment optimization while accounting for estimation risk. Journal of Marketing Analytics Vol. 3, No. 2, pp. 79–95.
    • Radcliffe N.J. & Surry, P.D. (1999). Differential response analysis: Modeling true response by isolating the effect of a single action. In Proceedings of Credit Scoring and Credit Control VI. Credit Research Centre, University of Edinburgh Management School.
    • Radcliffe N.J. & Surry, P.D. (2011). Real-World Uplift Modelling with Significance-Based Uplift Trees. Technical Report TR-2011-1, Stochastic Solutions, 2011, pp. 1-33.
    • Rzepakowski, P. & Jaroszewicz, S. (2012). Decision trees for uplift modeling with single and multiple treatments. Knowledge and Information Systems, Vol. 32, pp. 303–327.
    • Rzepakowski, P. & Jaroszewicz, S. (2012). Uplift modeling in direct marketing. Journal of Telecommunications and Information Technology, Vol. 2, 2012, pp. 43–50.
    • Rudaś, K. & Jaroszewicz, S. (2018). Linear regression for uplift modeling. Data Mining and Knowledge Discovery, Vol. 32, No. 5, September 2018, pp. 1275–1305.
    • Shaar, A., Abdessalem, T. and Segard, O (2016). “Pessimistic Uplift Modeling”. ACM SIGKDD, August 2016, San Francisco, California, USA.
    • Sołtys, M., Jaroszewicz, S. & Rzepakowski, P. (2015). Ensemble methods for uplift modeling. Data Mining and Knowledge Discovery, Vol. 29, No. 6, November 2015, pp. 1531–1559.

    List of data references