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A Direct Propagation Method in Singly Connected Causal Belief Networks with Conditional Distributions for all Causes

机译:具有所有原因的条件分布的单连通因果信念网络中的直接传播方法

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Existing algorithms of propagation in belief networks deal with inference of observations when conditional distributions are initially defined per edge. The aim of this paper is to propose a direct method of causal inference of both observations and interventions on the causal belief networks quantified with the belief function theory where conditional beliefs are defined for all parents without having to transform the network into a junction tree. We explain how it is still possible to use the disjunctive rule of combination DRC and the generalized Bayesian theorem GBT to perform this propagation.
机译:当最初为每个边缘定义条件分布时,信念网络中的现有传播算法会处理观察的推断。本文的目的是提出一种直接的因果关系网络观察和干预因果关系推断方法,该因果关系网络通过信念函数理论进行量化,其中为所有父母定义了条件信念,而不必将网络转化为连接树。我们将说明仍然有可能使用组合DRC和广义贝叶斯定理GBT的析取规则来执行此传播。

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