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Algorithms for Causal Reasoning in Probability Trees

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arxiv 2010.12237 v2 pith:MZK7TSKS submitted 2020-10-23 cs.AI cs.LG

Algorithms for Causal Reasoning in Probability Trees

classification cs.AI cs.LG
keywords causalprobabilityreasoningtheytreesalgorithmsdiscreteprocesses
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Probability trees are one of the simplest models of causal generative processes. They possess clean semantics and -- unlike causal Bayesian networks -- they can represent context-specific causal dependencies, which are necessary for e.g. causal induction. Yet, they have received little attention from the AI and ML community. Here we present concrete algorithms for causal reasoning in discrete probability trees that cover the entire causal hierarchy (association, intervention, and counterfactuals), and operate on arbitrary propositional and causal events. Our work expands the domain of causal reasoning to a very general class of discrete stochastic processes.

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