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  1. On the completeness of orientation rules for causal discovery in the presence of latent confounders and selection bias.Jiji Zhang - 2008 - Artificial Intelligence 172 (16-17):1873-1896.
    Causal discovery becomes especially challenging when the possibility of latent confounding and/or selection bias is not assumed away. For this task, ancestral graph models are particularly useful in that they can represent the presence of latent confounding and selection effect, without explicitly invoking unobserved variables. Based on the machinery of ancestral graphs, there is a provably sound causal discovery algorithm, known as the FCI algorithm, that allows the possibility of latent confounders and selection bias. However, the orientation rules used in (...)
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  • Sound and complete causal identification with latent variables given local background knowledge.Tian-Zuo Wang, Tian Qin & Zhi-Hua Zhou - 2023 - Artificial Intelligence 322 (C):103964.
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  • Ancestral Graph Markov Models.Thomas Richardson & Peter Spirtes - unknown
    This paper introduces a class of graphical independence models that is closed under marginalization and conditioning but that contains all DAG independence models. This class of graphs, called maximal ancestral graphs, has two attractive features: there is at most one edge between each pair of vertices; every missing edge corresponds to an independence relation. These features lead to a simple parameterization of the corresponding set of distributions in the Gaussian case.
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  • An efficient algorithm for counting Markov equivalent DAGs.Robert Ganian, Thekla Hamm & Topi Talvitie - 2022 - Artificial Intelligence 304 (C):103648.
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  • (1 other version)Towards characterizing Markov equivalence classes for directed acyclic graphs with latent variables.Ayesha Ali, Thomas Richardson, Peter Spirtes & Jiji Zhang - unknown
    It is well known that there may be many causal explanations that are consistent with a given set of data. Recent work has been done to represent the common aspects of these explanations into one representation. In this paper, we address what is less well known: how do the relationships common to every causal explanation among the observed variables of some DAG process change in the presence of latent variables? Ancestral graphs provide a class of graphs that can encode conditional (...)
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  • A transformational characterization of Markov equivalence for directed acyclic graphs with latent variables.Jiji Zhang & Peter Spirtes - unknown
    Different directed acyclic graphs may be Markov equivalent in the sense that they entail the same conditional independence relations among the observed variables. Chickering provided a transformational characterization of Markov equivalence for DAGs, which is useful in deriving properties shared by Markov equivalent DAGs, and, with certain generalization, is needed to prove the asymptotic correctness of a search procedure over Markov equivalence classes, known as the GES algorithm. For DAG models with latent variables, maximal ancestral graphs provide a neat representation (...)
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