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Information-theoretic characterizations of Markov random fields and subfields

机译:马尔可夫随机场和子场的信息理论表征

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Let Xi, i ∊ V form a Markov random field (MRF) represented by an undirected graph G = (V, E), and V' be a subset of V. We determine the smallest graph that can always represent the subfield Xi, i ∊ V' as an MRF. Based on this result, we obtain a necessary and sufficient condition for a subfield of a Markov tree to be also a Markov tree. When G is a path so that Xi, i ∊ V form a Markov chain, it is known that the I — Measure is always nonnegative [3]. We prove that Markov chain is essentially the only MRF that possesses this property. Our work is built on the set-theoretic characterization of an MRF in [4]. Unlike most works in the literature, we do not make the standard assumption that the underlying probability distribution is factorizable with respect to the graph representing the MRF.
机译:令Xi,i ∊ V形成一个由无向图G =(V,E)表示的马尔可夫随机场(MRF),并且V'是V的子集。我们确定可以始终代表子场Xi,i的最小图∊ V'作为MRF。基于此结果,我们获得了马尔可夫树的子字段也成为马尔可夫树的充要条件。当G是一条路径,使Xi,i ∊ V形成一个马尔可夫链时,已知I测度总是非负的[3]。我们证明,马尔可夫链本质上是拥有此属性的唯一MRF。我们的工作建立在[4]中的MRF的集合理论表征上。与文献中的大多数著作不同,我们没有做出标准的假设,即相对于代表MRF的图,潜在的概率分布是可分解的。

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