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Markov Networks

Representation. Probabilistic Graphical Models. Independencies. Markov Networks. Independence & Factorization. Factorization of a distribution P over a graph implies independencies in P. P(X,Y,Z) = P(X) P(Y). X,Y independent. P( X , Y , Z )   1 ( X , Y )  2 ( Y , Z ).

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Markov Networks

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  1. Representation Probabilistic Graphical Models Independencies MarkovNetworks

  2. Independence & Factorization • Factorization of a distribution P over a graph implies independencies in P P(X,Y,Z) = P(X) P(Y) X,Y independent • P(X,Y,Z)  1(X,Y) 2(Y,Z) (X  Y | Z)

  3. Separation in MNs Definition: X and Y are separated in H given Z if there is no active trail in H between X and Y given Z I(H) = {(X  Y | Z) : sepH(X, Y | Z)}

  4. A F D B C E • If P satisfies I(H), we say that H is an I-map (independency map) of P

  5. Factorization  Independence • Theorem: If P factorizes over H, then H is an I-map for P A F D B C E

  6. Independence  Factorization • Theorem (Hammersley Clifford): For a positive distribution P, if H is an I-map for P, then P factorizes over H

  7. Summary Two equivalent* views of graph structure: • Factorization: H allows P to be represented • I-map: Independencies encoded by H hold in P If P factorizes over a graph H, we can read from the graph independencies that must hold in P (an independency map) * for positive distributions

  8. END END END

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