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The Belief Noisy-OR Model Applied to Network Reliability Analysis

机译:Belief Noisy-OR模型在网络可靠性分析中的应用

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摘要

One difficulty faced in knowledge engineering for Bayesian Network (BN) is the quantification step where the Conditional Probability Tables (CPTs) are determined. The number of parameters included in CPTs increases exponentially with the number of parent variables. The most common solution is the application of the so-called canonical gates. The Noisy-OR (NOR) gate, which takes advantage of the independence of causal interactions, provides a logarithmic reduction of the number of parameters required to specify a CPT. In this paper, an extension of NOR model based on the theory of belief functions, named Belief Noisy-OR (BNOR), is proposed. BNOR is capable of dealing with both aleatory and epistemic uncertainty of the network. Compared with NOR, more rich information which is of great value for making decisions can be got when the available knowledge is uncertain. Specially, when there is no epistemic uncertainty, BNOR degrades into NOR. Additionally, different structures of BNOR are presented in this paper in order to meet various needs of engineers. The application of BNOR model on the reliability evaluation problem of networked systems demonstrates its effectiveness.
机译:贝叶斯网络(BN)的知识工程面临的一个难题是确定条件概率表(CPT)的量化步骤。 CPT中包含的参数数量随父变量的数量呈指数增加。最常见的解决方案是所谓规范门的应用。利用因果相互作用的独立性,Noisy-OR(NOR)门提供指定CPT所需参数数量的对数减少。本文提出了一种基于信念函数理论的NOR模型扩展方法,即Belief Noisy-OR(BNOR)。 BNOR能够处理网络的偶然性和认知不确定性。与NOR相比,在不确定可用知识的情况下,可以获得更丰富的信息,这些信息对于决策至关重要。特别是,当没有认知不确定性时,BNOR会降级为NOR。此外,本文介绍了BNOR的不同结构,以满足工程师的各种需求。 BNOR模型在网络系统可靠性评估中的应用证明了其有效性。

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