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Fully Bayesian Binary Markov Random Field Models: Prior Specification and Posterior Simulation

机译:完全贝叶斯二进制马尔可夫随机场模型:先验规范和后验模拟

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We propose a flexible prior model for the parameters of binary Markov random fields (MRF), defined on rectangular lattices and with maximal cliques defined from a template maximal clique. The prior model allows higher-order interactions to be included. We also define a reversible jump Markov chain Monte Carlo algorithm to sample from the associated posterior distribution. The number of possible parameters for a higher-order MRF becomes high, even for small template maximal cliques. We define a flexible parametric form where the parameters have interpretation as potentials for clique configurations, and limit the effective number of parameters by assigning apriori discrete probabilities for events where groups of parameter values are equal. To cope with the computationally intractable normalising constant of MRFs, we adopt a previously defined approximation of binary MRFs. We demonstrate the flexibility of our prior formulation with simulated and real data examples.
机译:我们为二进制马尔可夫随机场(MRF)的参数提出了一个灵活的先验模型,该模型在矩形格子上定义,并具有从模板最大集团定义的最大集团。先验模型允许包含更高阶的交互。我们还定义了可逆的跳跃马尔可夫链蒙特卡罗算法,以从关联的后验分布中采样。即使对于较小的模板最大集团,用于高阶MRF的可能参数的数量也会变多。我们定义了一种灵活的参数形式,其中参数被解释为集团配置的潜力,并通过为参数值组相等的事件分配先验离散概率来限制参数的有效数量。为了应付MRF的计算上难以解决的归一化常数,我们采用了先前定义的二进制MRF的近似值。我们通过模拟和真实数据示例展示了我们先前公式的灵活性。

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