Difference between revisions of "Markov Logic Networks"

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(Created page with 'This is a [[category::method]] that combines fi�rst-order logic and probabilistic graphical models in a single representation. A Markov Logic Network (or MLN) is a probabilisti…')
 
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This is a [[category::method]] that combines fi�rst-order logic and probabilistic graphical models in a single representation. A Markov Logic Network (or MLN) is a probabilistic logic which applies the ideas of a Markov network to first-order logic, enabling uncertain inference. Markov logic networks generalize first-order logic, in the sense that, in a certain limit, all unsatisfiable statements have a probability of zero, and all tautologies have probability one.
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This is a [[category::method]] that combines first-order logic and probabilistic graphical models in a single representation. A Markov Logic Network (or MLN) is a probabilistic logic which applies the ideas of a Markov network to first-order logic, enabling uncertain inference. Markov logic networks generalize first-order logic, in the sense that, in a certain limit, all unsatisfiable statements have a probability of zero, and all tautologies have probability one.
  
 
== Relevant Papers ==
 
== Relevant Papers ==

Revision as of 02:06, 21 September 2011

This is a method that combines first-order logic and probabilistic graphical models in a single representation. A Markov Logic Network (or MLN) is a probabilistic logic which applies the ideas of a Markov network to first-order logic, enabling uncertain inference. Markov logic networks generalize first-order logic, in the sense that, in a certain limit, all unsatisfiable statements have a probability of zero, and all tautologies have probability one.

Relevant Papers