Finding Latent Causes in Causal Networks: an Efficient Approach Based on Markov Blankets
Pellet, Jean-philippe, Elisseeff, André
–Neural Information Processing Systems
Causal structure-discovery techniques usually assume that all causes of more than one variable are observed. This is the so-called causal sufficiency assumption. In practice, it is untestable, and often violated. In this paper, we present an efficient causal structure-learning algorithm, suited for causally insufficient data. Similar to algorithms such as IC* and FCI, the proposed approach drops the causal sufficiency assumption and learns a structure that indicates (potential) latent causes for pairs of observed variables.
Neural Information Processing Systems
Feb-15-2020, 02:57:35 GMT
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