Graphical models such as Markov random fields (MRFs) that are associated with undirected graphs, and Bayesian networks (BNs) that are associated with directed acyclic graphs, have proven to be a very popular approach for reasoning under uncertainty, prediction problems and causal inference. Parametric MRF likelihoods are well-studied for Gaussian and categorical data. However, in more complicated parametric and semi-parametric settings, likelihoods specified via clique potential functions are generally not known to be congenial {(jointly well-specified)} or non-redundant. Congenial and non-redundant DAG likelihoods are far simpler to specify in both parametric and semi-parametric settings by modeling Markov factors in the DAG factorization. However, DAG likelihoods specified in this way are not guaranteed to coincide in distinct DAGs within the same Markov equivalence class. This complicates likelihoods based model selection procedures for DAGs by ``sneaking in'' potentially unwarranted assumptions about edge orientations. In this paper we link a density function decomposition due to Chen with the clique factorization of MRFs described by Lauritzen to provide a general likelihood for MRF models. The proposed likelihood is composed of variationally independent, and non-redundant closed form functionals of the observed data distribution, and is sufficiently general to apply to arbitrary parametric and semi-parametric models. We use an extension of our developments to give a general likelihood for DAG models that is guaranteed to coincide for all members of a Markov equivalence class. Our results have direct applications for model selection and semi-parametric inference.
翻译:与无方向图形相关的Markov随机字段(MRFs)和与定向循环图形相关的Bayesian网络(BNs)等图形模型被证明是在不确定性、预测问题和因果关系推推论下进行推理的非常流行的方法。对Gaussian和绝对数据来说,参数MRF的可能性研究得非常透彻。但是,在更为复杂的参数和半参数环境中,通过分层潜在功能指定的可能性一般不为人所知,而通过分层潜在功能确定的可能性一般不为同级或非冗余值。相近和非重复的DAGs(Bs)可能性,在对边缘方向的潜在假设中,Concial 和非编辑 DAGs(Bs) 可能性非常简单。在本文件中,通过模拟Markovs(Marksian) 系数的模型中建模, 我们的直径直度分布模型与直径直的磁共振值模型的缩缩缩缩缩缩缩缩缩缩缩缩缩缩缩缩缩缩缩缩图。