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  1.  20
    Information-geometric approach to inferring causal directions.Dominik Janzing, Joris Mooij, Kun Zhang, Jan Lemeire, Jakob Zscheischler, Povilas Daniušis, Bastian Steudel & Bernhard Schölkopf - 2012 - Artificial Intelligence 182-183 (C):1-31.
  2. Replacing Causal Faithfulness with Algorithmic Independence of Conditionals.Jan Lemeire & Dominik Janzing - 2013 - Minds and Machines 23 (2):227-249.
    Independence of Conditionals (IC) has recently been proposed as a basic rule for causal structure learning. If a Bayesian network represents the causal structure, its Conditional Probability Distributions (CPDs) should be algorithmically independent. In this paper we compare IC with causal faithfulness (FF), stating that only those conditional independences that are implied by the causal Markov condition hold true. The latter is a basic postulate in common approaches to causal structure learning. The common spirit of FF and IC is to (...)
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    Causal versions of maximum entropy and principle of insufficient reason.Dominik Janzing - 2021 - Journal of Causal Inference 9 (1):285-301.
    The principle of insufficient reason assigns equal probabilities to each alternative of a random experiment whenever there is no reason to prefer one over the other. The maximum entropy principle generalizes PIR to the case where statistical information like expectations are given. It is known that both principles result in paradoxical probability updates for joint distributions of cause and effect. This is because constraints on the conditional P P\left result in changes of P P\left that assign higher probability to those (...)
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