Jan. 1, 2023, midnight | Tobias Fritz, Andreas Klingler

JMLR www.jmlr.org

The d-separation criterion detects the compatibility of a joint probability distribution with a directed acyclic graph through certain conditional independences. In this work, we study this problem in the context of categorical probability theory by introducing a categorical definition of causal models, a categorical notion of d-separation, and proving an abstract version of the d-separation criterion. This approach has two main benefits. First, categorical d-separation is a very intuitive criterion based on topological connectedness. Second, our results apply both to …

abstract apply benefits categorical context definition distribution graph notion probability probability theory spaces standard study theory through work

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