2020
DOI: 10.48550/arxiv.2010.06164
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Causal Structure Learning: a Bayesian approach based on random graphs

Abstract: A Random Graph is a random object which take its values in the space of graphs. We take advantage of the expressibility of graphs in order to model the uncertainty about the existence of causal relationships within a given set of variables. We adopt a Bayesian point of view in order to capture a causal structure via interaction and learning with a causal environment. We test our method over two different scenarios, and the experiments mainly confirm that our technique can learn a causal structure. Furthermore,… Show more

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