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picture1_Probabilistic Graphical Models Pdf 89550 | Lecture4


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File: Probabilistic Graphical Models Pdf 89550 | Lecture4
probabilistic graphical models raquel urtasun and tamir hazan tti chicago april 4 2011 raquel urtasun and tamir hazan tti c graphical models april 4 2011 1 22 bayesian networks and ...

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                               Probabilistic Graphical Models
                                   Raquel Urtasun and Tamir Hazan
                                                     TTI Chicago
                                                   April 4, 2011
 Raquel Urtasun and Tamir Hazan (TTI-C)              Graphical Models                            April 4, 2011   1 / 22
   Bayesian Networks and independences
    Not every distribution independencies can be captured by a directed graph
           Regularity in the parameterization of the distribution that cannot be
           captured in the graph structure, e.g., XOR example
                             P(x,y,z) =  1/12                  if x ⊕ y ⊕ z = false
                                                   1/6          if x ⊕ y ⊕ z = true
                   (X ⊥Y)∈I(P)
                   Z is not independent of X given Y or Y given X.
                   An I-map is the network X → Z ← Y.
                   This is not a perfect map as (X ⊥ Z) ∈ I(P)
           Symmetric variable-level independencies that are not naturally expressed
           with a Bayesian network.
           Independence assumptions imposed by the structure of the DBN are not
           appropriate, e.g., misconception example
 Raquel Urtasun and Tamir Hazan (TTI-C)              Graphical Models                            April 4, 2011   2 / 22
   Misconception example
                             (a)                       (b)                           (c)
           (a) Two independencies: (A ⊥ C|D,B) and (B ⊥ D|A,C)
           Can we encode this with a BN?
           (b) First attempt: encodes (A ⊥ C|D,B) but it also implies that (B ⊥ D|A)
           but dependent given both A,C
           (c) Second attempt: encodes (A ⊥ C|D,B), but also implies that B and D
           are marginally independent.
 Raquel Urtasun and Tamir Hazan (TTI-C)              Graphical Models                            April 4, 2011   3 / 22
   Undirected graphical models I
           So far we have seen directed graphical models or Bayesian networks
           BNdonot captured all the independencies, e.g., misconception example,
           Wewant a representation that does not require directionality of the
           influences. We do this via an undirected graph.
           Undirected graphical models, which are useful in modeling phenomena where
           the interaction between variables does not have a clear directionality.
           Often simpler perspective on directed models, in terms of the independence
           structure and of inference.
 Raquel Urtasun and Tamir Hazan (TTI-C)              Graphical Models                            April 4, 2011   4 / 22
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...Probabilistic graphical models raquel urtasun and tamir hazan tti chicago april c bayesian networks independences not every distribution independencies can be captured by a directed graph regularity in the parameterization of that cannot structure e g xor example p x y z if false true i is independent given or an map network this perfect as symmetric variable level are naturally expressed with independence assumptions imposed dbn appropriate misconception b two d we encode bn first attempt encodes but it also implies dependent both second marginally undirected so far have seen bndonot all wewant representation does require directionality inuences do via which useful modeling phenomena where interaction between variables clear often simpler perspective on terms inference...

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