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Santhosh Kumar Ramakrishnan, Tushar Nagarajan (, ICLR 2022)
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Shuhan Tan, Tushar Nagarajan (, arXivorg)
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Santhosh Kumar Ramakrishnan, Tushar Nagarajan (, ICLR 2022)
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Tushar Nagarajan, Kristen Grauman (, NeurIPS 2021)
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Rohit Bhattacharya; Tushar Nagarajan; Daniel Malinsky; Ilya Shpitser (, Proceedings of the International Conference on Artificial Intelligence and Statistics)Arindam Banerjee; Kenji Fukumizu (Ed.)The data drawn from biological, economic, and social systems are often confounded due to the presence of unmeasured variables. Prior work in causal discovery has focused on discrete search procedures for selecting acyclic directed mixed graphs (ADMGs), specifically ancestral ADMGs, that encode ordinary conditional independence constraints among the observed variables of the system. However, confounded systems also exhibit more general equality restrictions that cannot be represented via these graphs, placing a limit on the kinds of structures that can be learned using ancestral ADMGs. In this work, we derive differentiable algebraic constraints that fully characterize the space of ancestral ADMGs, as well as more general classes of ADMGs, arid ADMGs and bow-free ADMGs, that capture all equality restrictions on the observed variables. We use these constraints to cast causal discovery as a continuous optimization problem and design differentiable procedures to find the best fitting ADMG when the data comes from a confounded linear system of equations with correlated errors. We demonstrate the efficacy of our method through simulations and application to a protein expression dataset. Code implementing our methods is open-source and publicly available at https: //gitlab.com/rbhatta8/dcd and will be incorporated into the Ananke package.more » « less
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