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Inference in directed evidential networks based on the transferable belief model

机译:基于可转移信念模型的定向证据网络推理

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Inference algorithms in directed evidential networks (DEVN) obtain their efficiency by making use of the represented independencies between variables in the model. This can be done using the disjunctive rule of combination (DRC) and the generalized Bayesian theorem (GBT), both proposed by Smets [Ph. Smets, Belief functions: the disjunctive rule of combination and the generalized Bayesian theorem, International Journal of Approximate Reasoning 9 (1993) 1-35]. These rules make possible the use of conditional belief functions for reasoning in directed evidential networks, avoiding the computations of joint belief function on the product space. In this paper, new algorithms based on these two rules are proposed for the propagation of belief functions in singly and multiply directed evidential networks.
机译:定向证据网络(DEVN)中的推理算法通过利用模型中变量之间表示的独立性来获得其效率。可以使用Smets提出的组合的析取规则(DRC)和广义贝叶斯定理(GBT)来完成。 Smets,信念函数:组合的析取规则和广义贝叶斯定理,国际近似推理杂志9(1993)1-35]。这些规则使得在有条件的证据网络中使用条件置信函数进行推理成为可能,从而避免了在产品空间上进行联合置信函数的计算。本文提出了基于这两个规则的新算法,用于在单向和多向证据网络中传播置信函数。

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