A friendly introduction to causal inference
DISCLAIMER: this is an alpha-version of this project. We hope to make it grow in quality and quantity as more people get involved. If interested, please reach out!
This is meant to be a resource for causal-curious folks who are looking for accessible introduction to common topics in causal inference.
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We do not aim at replacing Wikipedia, or any of the excellent textbooks already out there on the topic.
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We do aim to include quick references to common topics of interest, and grow naturally with community's needs, expertise and interests. We hope to make this a collaborative project, so please get in touch if you'd like to make a contribution, or jump on it and create an issue or pull request.
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Common Terms (Terminology)
- G-something terms (Overview)
- G-estimation
- G-formula
- G-Identifiably
- G-etc.
- Interventions
- Counterfactuals
- G-something terms (Overview)
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Causal Discovery
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Common Assumptions
- Positivity
- SUTVA
- Consistency
- Compliance
- Exchangeability
- Ignorability (weak and strong)
- No-unmeasured confounding
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Types of Causal Effects
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Potential Outcomes vs. Graphical Models
- Other types of causality
- Granger causality, Causal Impact, etc.
- Other types of causality
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(Causal Effects) Identifiability
- Challenges to identifiability: sources of bias
- Confounding
- (Sample) Selection Bias(Common_terms/Identifiability/Bias/Selection_bias.md)
- Common methods for identification
- Instrumental variables (IVs)
- Diffs in Diffs
- Doubly robust methods
- 2 step regression/IV regression
- Meta-learners
- S-learner
- T-learner
- R-learner
- X-learner
- Negative controls
- Method of Moments (moment matching?)
- Propensity score and matching
- Do-calculus
- Proxy variables
- Challenges to identifiability: sources of bias
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Counterfactuals
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Philosophy of Causality
- Nancy Cartwright
- Hunting Causes
- Refer to Stanford Encyclopedia
- Inspiration
- Nancy Cartwright
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[Suggested readings]
- Textbooks
- Twitter/Blogs
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Software
- Packages etc.
A general format for an entry is encouraged to have the following structure:
- Motivation
- Definition
- Intuition (including examples and relation to other concepts)
- Further reading
We aim for entries to provide a complete and concise introduction, with pointers to more elaborate sources.
The Causal Inference Handbook is a joint effort by these contributors