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Bibliographic Details
Main Authors: Arroyo, João P., Rodrigues, João G., Lawand, Daniel, Mauá, Denis D., Lee, Junkyu, Marinescu, Radu, Gray, Alex, Laurentino, Eduardo R., Cozman, Fabio G.
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.03548
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Table of Contents:
  • We investigate partially identifiable queries in a class of causal models. We focus on acyclic Structural Causal Models that are quasi-Markovian (that is, each endogenous variable is connected with at most one exogenous confounder). We look into scenarios where endogenous variables are observed (and a distribution over them is known), while exogenous variables are not fully specified. This leads to a representation that is in essence a Bayesian network where the distribution of root variables is not uniquely determined. In such circumstances, it may not be possible to precisely compute a probability value of interest. We thus study the computation of tight probability bounds, a problem that has been solved by multilinear programming in general, and by linear programming when a single confounded component is intervened upon. We present a new algorithm to simplify the construction of such programs by exploiting input probabilities over endogenous variables. For scenarios with a single intervention, we apply column generation to compute a probability bound through a sequence of auxiliary linear integer programs, thus showing that a representation with polynomial cardinality for exogenous variables is possible. Experiments show column generation techniques to be superior to existing methods.