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📄 Abstract
Abstract: A fundamental challenge in the empirical sciences involves uncovering causal
structure through observation and experimentation. Causal discovery entails
linking the conditional independence (CI) invariances in observational data to
their corresponding graphical constraints via d-separation. In this paper, we
consider a general setting where we have access to data from multiple
experimental distributions resulting from hard interventions, as well as
potentially from an observational distribution. By comparing different
interventional distributions, we propose a set of graphical constraints that
are fundamentally linked to Pearl's do-calculus within the framework of hard
interventions. These graphical constraints associate each graphical structure
with a set of interventional distributions that are consistent with the rules
of do-calculus. We characterize the interventional equivalence class of causal
graphs with latent variables and introduce a graphical representation that can
be used to determine whether two causal graphs are interventionally equivalent,
i.e., whether they are associated with the same family of hard interventional
distributions, where the elements of the family are indistinguishable using the
invariances from do-calculus. We also propose a learning algorithm to integrate
multiple datasets from hard interventions, introducing new orientation rules.
The learning objective is a tuple of augmented graphs which entails a set of
causal graphs. We also prove the soundness of the proposed algorithm.
Authors (3)
Zihan Zhou
Muhammad Qasim Elahi
Murat Kocaoglu
Key Contributions
Proposes a set of graphical constraints derived from comparing multiple interventional distributions, fundamentally linked to Pearl's do-calculus for causal discovery with hard interventions. It characterizes the interventional equivalence class of causal graphs, even with latent variables, providing a new graphical representation.
Business Value
Enables more robust causal inference in fields like medicine, economics, and social sciences, leading to better understanding of cause-and-effect relationships and more informed decision-making.