MSAISTJul 9, 2021

Algorithmic Causal Effect Identification with causaleffect

arXiv:2107.04632v14 citations
Originality Synthesis-oriented
AI Analysis

This work provides a practical tool for researchers in causal inference to apply established algorithms, but it is incremental as it focuses on implementation rather than new theoretical contributions.

The authors reviewed and implemented in Python the causal effect identification algorithms by Shpitser and Pearl (2006) to compute causal queries from observational data, resulting in a new Python library with usage examples.

Our evolution as a species made a huge step forward when we understood the relationships between causes and effects. These associations may be trivial for some events, but they are not in complex scenarios. To rigorously prove that some occurrences are caused by others, causal theory and causal inference were formalized, introducing the $do$-operator and its associated rules. The main goal of this report is to review and implement in Python some algorithms to compute conditional and non-conditional causal queries from observational data. To this end, we first present some basic background knowledge on probability and graph theory, before introducing important results on causal theory, used in the construction of the algorithms. We then thoroughly study the identification algorithms presented by Shpitser and Pearl in 2006, explaining our implementation in Python alongside. The main identification algorithm can be seen as a repeated application of the rules of $do$-calculus, and it eventually either returns an expression for the causal query from experimental probabilities or fails to identify the causal effect, in which case the effect is non-identifiable. We introduce our newly developed Python library and give some usage examples.

Code Implementations1 repo
Foundations

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