Computing causal effects
Project description
causaleffect
This project implements causal effect identifiability algorithms and provides functionality for defining and plotting causal diagrams.
It implements both conditional and non-conditional causal effect queries from a DAG, and returns a hedge if the inputted causal effect is not identifiable.
For more information, please look at our Github page.
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