-
Philosophical Essays Concerning Human Understanding, David Hume, 1748
-
The Direction of Time, Hans Reichenbach, edited by Maria Rechenbach, U California Press, 1956
-
Probabilistic Causality, Ellery Eells, University of Wisconsin-Madison, 1991
-
Causality - Models, Reasoning and Inference, Judea Pearl, 2nd Edition, 2009
-
Counterfactuals and Causal Inference, Stephen Morgan and Christopher Winship, 2nd Edition, 2015
-
Dynamic Bayesian Networks: Representation, Inference and Learning, K. Murphy, 2002, PhD Thesis
-
The Book of Why: The New Science of Cause and Effect, J. Pearl, 2018
-
Causation, Prediction and Search, P. Spirtes, C. Glymour, R. Scheines, CMU, 2001
-
Elements of Causal Inference, J. Peters, D. Janzing, B. Schloekopf, 2017
-
Introduction to Causal Inference from Machine Learning Perspective, Brady Neal, 2020
-
Probabilistic Causality and Multiple Causation, Paul Humphreys, 1980
-
Scoring Ancestral Graph Models, Thomas Richardson and Richard Spirtes, 1999
-
Causation, Prediction and Search, Peter Spirtes, Clark Glymour, Richard Scheines, PhD Thesis, 2000
-
Probabilistic Measures of Causal Strength, Branden Fitelson, Christopher Hitchock, 2011
Companion notebook here
-
Foundations of Probabilistic Theory of Causal Strength, J. Sprenger, 2017
-
Causal Laws and Effective Strategies, Nancy Cartwright, Stanford U., 1979
-
Introduction to Causal Inference, Peter Spirtes, Carnegie Mellon University, 2010
-
An Introduction to Causal Inference, Richard Scheines, Carnegie Mellon University, 1995
-
An Algorithmic Enquiry Concerning Causality, Samantha Kleinberg, PhD Thesis, 2010
-
Identification of Causal Effects Using Instrumental Variables, Angrist, Imbens, Rubin, 1993
-
Probabilistic Causality - A Rejoinder to Ellery Eells, Dupre, 1990
-
Discovering Cyclic Causal Structure, Thomas Richardson, Tech Report, 1996
-
Identifying Independencies in Causal Graphs with Feedback, J. Pearl, R Dechter, 1996
-
Applied Causal Inference Powered by ML and AI, V. Chernozhukov et al, 2024
-
The Complexity of Propositional Linear Temporal Logics, Sistla, Clarke, 1985
-
A Logic for Reasoning about Time and Reliability, Hansson and Jonsson, 1994
-
The Temporal Logic of Causal Structures, Kleinberg and Mishra, 2009
-
An Algorithmic Enquiry Concerning Causality, Samantha Kleinberg, PhD thesis, 2010
-
A New Introduction to Modal Logic, Hughes and Cresswell, 1996
-
Probabilistic Reasoning in Intelligent Systems, Judea Pearl, 1988
-
Identifying Independence in Bayesian Networks, Geiger, Verma, Pearl, 1990
-
Identifying Independencies in Causal Graphs with Feedback, J. Pearl and R. Dechter, 1996
-
Dynamic Bayesian Networks: Representation, Inference, Learning, Kevin Murphy, PhD thesis, 2002
-
Towards Causal Representation Learning, Bernhard Schölkopf et al, 2021
-
Invariant Risk Minimization, Martin Arjovsky, L´eon Bottou et al, 2020
-
Nonlinear Invariant Risk Minimization: A Causal Approach, Chaochao Lu et al, 2022
-
Conditional Independence in Directed Cyclic Graphical Models for Feedback, Peter Spirtes, 1994
-
Identifying Independencies in Causal Graphs with Feedback, J. Pearl and R. Dechter, 1996
-
Foundations of Structural Causal Models with Cycles and Latent Variables, S. Bongers et al, 2021
-
The Causal Foundations of Structural Equation Modeling, J Pearl, 2021
-
Elements of Causal Inference, J. Peters, D. Janzing, B. Schloekopf, 2017
-
Probabilistic Reasoning in Intelligent Systems, J. Pearl, 1988
-
Do-Calculus Revisited, Judea Pearl, Keynote Lecture, UAI-2012 Conference, Catalina, CA
-
The Book of Why: The Science of Cause and Effect, J. Pearl, 2018
-
Scientific Explanation and the Causal Structure of the World, Wesley C. Salmon, Princeton, 1984
-
Causality And Explanation, Collection of 26 of Wesley C. Salmon's essays, 1987
-
Probabilistic Measures of Causal Strength, (standalone reprint)
-
Probabilistic Measures of Causal Strength, companion notebook
-
Recursive Causal Models, Harri Kiiveri, T.P. Speed, J.B. Carlin, 1981
-
Gaussian Markov Distributions over Finite Graphs, T.P. Speed, H. Kiiveri, 1986
https://www.cmu.edu/dietrich/causality/publications/
First Causality Challenge organized by the Causality Workbench Team for the World Congress in Artificial Intelligence (WCCI), June 3, 2008, Hong Kong.
Collection of papers and discussion on variety of modeling techniques, focusing on predicting the effect of "interventions" performed by an external agent. All datasets which are used to train and test the models in this collection of papers are part of the challenge.
Link for sharing problems and test methods: https://www.causality.inf.ethz.ch/cause-effect.php
Link for downloading the datasets in the challenge: https://www.causality.inf.ethz.ch/challenge.php
-
The Dual Roots of Belief Propagation and Causal Inference with Oliver Beige
related papers:
Machine Learning Methods for Estimating Heterogeneous Causal Effects, Susan Athey, G.W. Imbens, 2015
-
Using machine learning metrics to evaluate causal inference models, Ehud Karavani
-
Solving Simpson's Paradox with Inverse Probability Weighting, Ehud Karavani
-
Establishing Causality with Michal Oleszak (Part 1): The golden standard of randomized experiments
-
Establishing Causality with Michal Oleszak (Part 2): Enforcing randomness via instrumental variables
-
Establishing Causality with Michal Oleszak (Part 3): Regression discontinuity designs
-
Causal Inference with Jane Huang (Part 1): Understanding the fundamentals
-
Causal Inference with Jane Huang (Part 2): Selecting algorithms
-
Causal Inference with Jane Huang (Part 3): Model validation and applications
-
Attribution analysis: How to measure impact with Lisa Cohen (Part 1)
-
Attribution analysis: How to measure impact with Lisa Cohen (Part 2)
-
Regression and Causal Inference: Which Variables Should Be Added to the Model?, Vivekanda Das
-
Double Machine Learning for Causal Inference from a Partially Linear Model, Zachary Clement
-
Double Machine Learning for causal inference, Borja Velasco, June 2021
-
Explore and understand your data with a network of significant associations, Erdogan Taskesen
-
A step-by-step guide in designing knowledge-driven models using Bayes theorem, Erdogan Taskesen
-
Introduction to Probabilistic Graphical Models, Branislav Hollander
-
Propensity Score Trimming Using Python Package
CausalInference
with Amy@GrabNGoInfo -
Six Causal Inference Techniques Using Python with Thomas Caputo
-
Causal Python - Level Up Your Causal Discovery Skills in Python (2023) with Aleksander Molak
-
Double Machine Learning for causal inference with Borja Velasco, 2021
-
Causal Inference - Structural Causal Models with Bruno Goncalves
-
Causal Inference - Model Testing and Causal Search with Bruno Goncalves
-
Causal Inference - The Adjustment Formula with Bruno Goncalves
-
Causal Inference - Front Door Criterion with Bruno Goncalves
-
Causal Inference - Conditional Interventions and Covariate Specific Effects with Bruno Goncalves
-
Causal Inference - Inverse Probability Weighing with Bruno Goncalves
-
Introducing the Do-Sampler for Causal Inference with Adam Kelleher
Jupyter notebook here Tutorial on Causal Inference and Counterfactual reasoning [here](https://causalinference.gitlab.io/kdd-tutorial/ Do-Sampler source code here Link to Judea Pearl's paper hereo
-
Demystifying Causality: An Introduction to Causal Inference and Applications, Part 1, with IvanGor
-
Demystifying Causality: An Introduction to Causal Inference, Part 2, with Ivan Gor
-
Demistifying Causality: An Introduction to Causal Inference, Part 3, with Ivan Gor
companion paper: here
-
Demistifying Causality: An Introduction to Causal Inference, Part 4, with Ivan Gor
-
Supply and Demand: Simultaneous Equations, not Simultaneous Causation with Ben Ogorek
related paper: link
-
Causal analysis with PyMC: Answering "What If?" with the new do operator with PyMC Labs
-
BICauseTree: Bias-balancing Interpretable Causal Tree with Lucile Ter-Minassian
related papers:
Causal Inference Using Potential Outcomes - Design, Modeling, Decisions, Rubin, 2005, JASA
RealCause: Realistic Causal Inference Benchmarking, Neal et al, 2021
-
Automated Causal Detection with Todd Moses, 2024
related papers: