2019
DOI: 10.48550/arxiv.1910.14124
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Bayesian causal inference via probabilistic program synthesis

Abstract: Causal inference can be formalized as Bayesian inference that combines a prior distribution over causal models and likelihoods that account for both observations and interventions. We show that it is possible to implement this approach using a sufficiently expressive probabilistic programming language. Priors are represented using probabilistic programs that generate source code in a domain specific language. Interventions are represented using probabilistic programs that edit this source code to modify the or… Show more

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