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Dec 8, 2022 - Python
causalml
Here are 14 public repositories matching this topic...
Causalis - State-of-the-art robust causal inference for experiments and observational data in python
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May 10, 2026 - Python
Replication of Simulations in Bach et al. (2024) - DoubleML - An Object-Oriented Implementation of Double Machine Learning in R, https://doi.org/10.18637/jss.v108.i03
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Jun 5, 2024 - R
Shiny App illustrating the Key Ingredients of the Double Machine Learning Approach
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Aug 2, 2022 - R
Exploratory project using uber's causalml to estimate average treatment effects on IT incident durations.
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Mar 12, 2024 - HTML
Reproducible benchmark of 7 uplift modeling approaches across 5 public datasets (Hillstrom, Criteo, Lenta, RetailHero, MegaFon) + synthetic DGP, with bootstrap CIs, robustness analysis, and presentation-ready comparison plots.
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May 5, 2026 - Python
A slide deck and set of jupyter notebooks created during my time with Fellowship.ai in order to decide what method would be best for predicting churn using the most up to date and innovative methods.
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Apr 19, 2021 - Jupyter Notebook
This is the replication of one R tutorial introduced in Machine Learning and Econometrics tutorial in AEA Annual Meeting 2018.
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Apr 24, 2018 - R
将五行理论与DML+集成学习融合的因果推断框架 | 稳健ATE估计 | 偏差降低89.8% | 支持银行/电商双场景
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May 9, 2026 - Python
Uplift-модель для таргетированного маркетинга (промокоды). T-learner, R-learner, Optuna, MLflow, Uplift@30%.
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Feb 26, 2026 - Jupyter Notebook
Business strategy simulation dashboard using A/B testing and Causal Inference
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Feb 19, 2026 - Jupyter Notebook
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