KGS: Causal Discovery Using Knowledge-guided Greedy Equivalence Search
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Date
2023-04-11
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Attribution 4.0 International (CC BY 4.0)
Attribution 4.0 International (CC BY 4.0)
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Abstract
Learning causal relationships solely from observational data provides insufficient information about
the underlying causal mechanism and the search
space of possible causal graphs. As a result, often the search space can grow exponentially for
approaches such as Greedy Equivalence Search
(GES) that uses a score-based approach to search
the space of equivalence classes of graphs. Prior
causal information such as the presence or absence
of a causal edge can be leveraged to guide the
discovery process towards a more restricted and accurate search space. In this study, we present KGS,
a knowledge-guided greedy score-based causal discovery approach that uses observational data and
structural priors (causal edges) as constraints to
learn the causal graph. KGS is a novel application of knowledge constraints that can leverage
any of the following prior edge information between any two variables: the presence of a directed
edge, the absence of an edge, and the presence
of an undirected edge. We extensively evaluate
KGS across multiple settings in both synthetic
and benchmark real-world datasets. Our experimental results demonstrate that structural priors
of any type and amount are helpful and guide the
search process towards an improved performance
and early convergence.