The content discusses the concept of removable variables in causal graphs, introducing MARVEL, L-MARVEL, RSL, and ROL methods for recursive causal discovery. Removable variables are crucial for reducing computational complexity and improving statistical efficiency in causal discovery tasks. The algorithms presented focus on identifying removable variables and their neighbors to streamline the causal discovery process.
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arxiv.org
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