A Pair of Bayesian Network Structures has Undecidable Conditional Independencies
Given a Bayesian network structure (directed acyclic graph), the celebrated d-separation algorithm efficiently determines whether the network structure implies a given conditional independence relation. We show that this changes drastically when we consider two Bayesian network structures instead. I...
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Zusammenfassung: | Given a Bayesian network structure (directed acyclic graph), the celebrated
d-separation algorithm efficiently determines whether the network structure
implies a given conditional independence relation. We show that this changes
drastically when we consider two Bayesian network structures instead. It is
undecidable to determine whether two given network structures imply a given
conditional independency, that is, whether every collection of random variables
satisfying both network structures must also satisfy the conditional
independency. Although the approximate combination of two Bayesian networks is
a well-studied topic, our result shows that it is fundamentally impossible to
accurately combine the knowledge of two Bayesian network structures, in the
sense that no algorithm can tell what conditional independencies are implied by
the two network structures. We can also explicitly construct two Bayesian
network structures, such that whether they imply a certain conditional
independency is unprovable in the ZFC set theory, assuming ZFC is consistent. |
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DOI: | 10.48550/arxiv.2405.07107 |