Symbolic causal inference via operations on probabilistic circuits
Causal inference provides a means of translating a target causal query into a causal formula, which is a function of the observational distribution, given some assumptions on the domain. With the advent of modern neural probabilistic models, this opens up the possibility to perform accurate and trac...
Main Authors: | Wang, B, Kwiatkowska, M |
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Format: | Conference item |
Language: | English |
Published: |
OpenReview
2022
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