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[[Image:Diagram of a Markov blanket.svg|frame|In a Bayesian network, the Markov blanket of node ''A'' includes its parents, children and the other parents of all of its children.]]
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In [[machine learning]], the '''Markov blanket''' for a [[Vertex (graph theory)|node]] <math>A</math> in a [[Bayesian network]] is the set of nodes <math>\partial A</math> composed of <math>A</math>'s parents, its children, and its children's other parents. In a [[Markov network]], the Markov blanket of a node is its set of neighboring nodes. A Markov blanket may also be denoted by <math>MB(A)</math>.
 
Every set of nodes in the network is [[conditional independence|conditionally independent]] of <math>A</math> when conditioned on the set <math>\partial A</math>, that is, when conditioned on the Markov blanket of the node <math>A</math>. The probability has the [[Markov property]]; formally, for distinct nodes <math>A</math> and <math>B</math>:
 
:<math>\Pr(A \mid \partial A , B) = \Pr(A \mid \partial A). \!</math>
 
The Markov blanket of a node contains all the variables that shield the node from the rest of the network. This means that the Markov blanket of a node is the only knowledge needed to predict the behavior of that node. The term was coined by [[Judea Pearl| Pearl]] in 1988.<ref>{{cite book |last=Pearl |first=Judea |authorlink=Judea Pearl |title=Probabilistic Reasoning in Intelligent Systems: Networks of Plausible Inference |publisher=Morgan Kaufmann |location=San Mateo CA |year=1988 |isbn=0-934613-73-7 | series=Representation and Reasoning Series}}</ref>
 
In a Bayesian network, the values of the parents and children of a node evidently give information about that node; however, its children's parents also have to be included, because they can be used to explain away the node in question.
 
== See also ==
* [[Moral graph]]
 
==Notes==
<references/>
 
[[Category:Probability theory]]
[[Category:Bayesian networks]]
[[Category:Markov networks]]

Latest revision as of 00:00, 29 November 2014

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