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On Intercausal Interactions in Probabilistic Relational Models

机译:概率关系模型中的因果相互作用

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Probabilistic relational models (PRMs) extend Bayesian networks beyond propositional expressiveness by allowing the representation of multiple interacting classes. For a specific instance of sets of concrete objects per class, a ground Bayesian network is composed by replicating parts of the PRM. The interactions between the objects that are thereby induced, are not always obvious from the PRM. We demonstrate in this paper that the replicative structure of the ground network in fact constrains the space of possible probability distributions and thereby the possible patterns of intercausal interaction.
机译:概率关系模型(PRM)通过允许多个交互类的表示,将贝叶斯网络扩展到命题表达能力之外。对于每个类的一组具体对象的特定实例,地面贝叶斯网络是通过复制PRM的各个部分组成的。从PRM中,由此引发的对象之间的相互作用并不总是显而易见的。我们在本文中证明,地面网络的复制结构实际上限制了可能的概率分布的空间,从而限制了因果间相互作用的可能模式。

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