Materials Collection for Causal Inference
- Causal Inference for Statistics, Social, and Biomedical Sciences: An Introduction 1st Edition [201mx5] [ by Guido W. Imbens (Author), Donald B. Rubin (Author)]
- Causality: Models, Reasoning and Inference 2nd Edition [2009] [by Judea Pearl (Author)]
- Counterfactuals and Causal Inference: Methods And Principles For Social Research (Analytical Methods for Social Research) 2nd Edition [2014] [by Stephen L. Morgan (Author)]
- The Book of Why: The New Science of Cause and Effect [2018] [by Judea Pearl (Author), Dana Mackenzie (Author)]
- Elements of Causal Inference: Foundations and Learning Algorithms (Adaptive Computation and Machine Learning series) [2017] [by Jonas Peters (Author), Dominik Janzing (Author), Bernhard Schölkopf (Author)]
- Causation, Prediction, and Search (Lecture Notes in Statistics) [2011] [by Peter Spirtes (Author), Clark Glymour (Author), Richard Scheines (Author)]
- Introduction to Mediation, Moderation, and Conditional Process Analysis, Second Edition: A Regression-Based Approach (Methodology in the Social Sciences) 2nd Edition [2017] [by Andrew F. Hayes (Author)]
- Causal Inference in Statistics: A Primer 1st Edition [2016] [by Judea Pearl (Author), Madelyn Glymour (Author), Nicholas P. Jewell (Author)]
- Advanced Data Analysis from an Elementary Point of View [forthcoming] [by Cosma Rohilla Shalizi]
- Explanation in Causal Inference: Methods for Mediation and Interaction 1st Edition [2015] [by Tyler VanderWeele (Author)]
- Causal Inference [forthcoming] [Hernán MA, Robins JM]
- Causality [2017] [by Marloes Maathuis]
- Applied Causality [2017] [by David M. Blei]
- Applied Causality [2019] [by David M. Blei]
- Introduction to Causal Inference for Data Science [2017] [by Mathew Kiang, Zhe Zhang, Monica Alexande]
- Introduction to Causal Inference [2016] [by Teppei Yamamoto]
- Counterfactual Machine Learning [2018] [by Thorsten Joachims]
- Introduction to Causal Inference [2018] [by Maya L. Petersen & Laura B. Balzer]
- STAT 320: Design and Analysis of Causal Studies [2014] [by Kari Lock Morgan and Fan Li]
- Causal Inference [2015] [by Matthew Blackwell]
- Machine Learning for Treatment Effects and Structural Equation Models [2016] [by Victor Chernozhukov]
- Causal Diagrams: Draw Your Assumptions Before Your Conclusions [2019] [by Miguel Hernán]
- A Crash Course in Causality: Inferring Causal Effects from Observational Data [2017] [by Jason A. Roy]
- Four Lectures on Causality [2017] [by Jonas Peters]
- [Introduction to Causal Inference: Philosophy, Framework and Key Methods] [2017] [by Erica Moodie]
- Introduction to Causal Inference: Philosophy, Framework and Key Methods PART ONE
- Introduction to Causal Inference: Philosophy, Framework and Key Methods PART TWO
- Introduction to Causal Inference: Philosophy, Framework and Key Methods PART THREE
- Introduction to Causal Inference: Philosophy, Framework and Key Methods PART FOUR
- Estimating causal effects of treatments in randomized and nonrandomized studies
- Causal inference using potential outcomes: Design, modeling, decisions
- Statistics and causal inference
- Approximate Residual Balancing: De-Biased Inference of Average Treatment Effects in High Dimensions
- Bayesian Nonparametric Modeling for Causal Inference
- Estimation and Inference of Heterogeneous Treatment Effects using Random Forests
- Double/Debiased Machine Learning for Treatment and Structural Parameters
- Doubly Robust Estimation in Missing Data and Causal Inference Models
- Matching methods for causal inference: A review and a look forward
- An introduction to propensity score methods for reducing the effects of confounding in observational studies
- Quasi-Oracle Estimation of Heterogeneous Treatment Effects
- Targeted Maximum Likelihood Learning
- Metalearners for estimating heterogeneous treatment effects using machine learning
- Another look at the instrumental variable estimation of error-components models
- Identification of Causal Effects Using Instrumental Variables
- Identification and estimation of local average treatment effects
- Comparative politics and the synthetic control method
- Synthetic Control Methods for Comparative Case Studies: Estimating the Effect of California’s Tobacco Control Program
- Causal Inference Tutorial – ICML 2016
- Tutorial on Causal Inference and Counterfactual Reasoning - KDD 2018
- Graphical Models for Causal Inference - UAI 2012
- Computational Advertising & Causality - UAI 2013
- Non-parametric Causal Models - UAI 2015
- Machine Learning and Counterfactual Reasoning for "Personalized" Decision-Making in Healthcare - UAI 2017
- Causes and Counterfactuals: Concepts, Principles and Tools - NeurIPS 2013
- Non-Parametric Causal Models - NeurIPS 2014
- Counterfactual Inference - NeurIPS 2018
- Causal inference at the intersection of machine learning and statistics: opportunities and challenges - AISTATS 2018
- CAUSAL INFERENCE IN STATISTICS: A Gentle Introduction - Joint Statistical Meetings 2016
- [IHDP] R Simulation
- [News] A dataset for treatment effect estimation as used in J, Shalit, Sontag, ICML, 2016.
- BART: Bayesian Additive Regression Trees
- tmle: Targeted Maximum Likelihood Estimation [depend on] SuperLearner: Super Learner Prediction
- causalToolbox provides functions for estimating heterogenous treatment effects (metalearners)
- grf: Generalized Random Forests (Beta)
- MatchIt: Nonparametric Preprocessing for Parametric Causal Inference (matching)
- Matching: Multivariate and Propensity Score Matching with Balance Optimization (matching)
- cem: Coarsened Exact Matching (cem)
- optmatch: Functions for Optimal Matching
- twang: Toolkit for Weighting and Analysis of Nonequivalent Groups
Have anything in mind that you think would fit in this list? Feel free to send a pull request.