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    The set of all common causes of X and Y d-separates {X} a... — Carmelics
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    Supports→If two correlated variables X and Y are not causally related to each other, then they share a common cause that screens them off from one another.

    The set of all common causes of X and Y d-separates {X} and {Y}.

    Causation
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    Causation

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    A collider-free path between X and Y with no directed path between them must con...If neither X nor Y is a cause of the other, then there is no directed path betwe...If two correlated variables X and Y are not causally related to each other, then...If {X} and {Y} are not d-separated by the empty set, then at least one path betw...

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    The Causal Markov Condition implies that if X and Y are correlated, then {X} and...

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    The Causal Markov Condition implies that if X and Y are correlated, th...78%If {X} and {Y} are not d-separated by the empty set, then at least one...73%If U_X is a cause of U_Y, then U_X is a common cause of X and Y, viola...72%If U_X and U_Y had a common cause, that common cause would also be a c...71%

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    The Causal Markov Condition implies the generalized version of RCCP presented in Section 2. This is most easily seen using the d-separation version. If variables X and Y are correlated, then \(\{X\}\) and \(\{Y\}\) are not d-separated by the empty set. This means that at least one path between X and Y must be without a collider. If we further assume that neither variable is a cause of the other, then there is no directed path between them. It then follows that the collider-free path must conta

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