Risk analysis using a hybrid Bayesian-approximate reasoning methodology

T. Bott, S.W. Eisenhawer
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引用次数: 4

Abstract

Analysts are sometimes asked to make frequency estimates for specific accidents in which the accident frequency is determined primarily by safety controls. Under these conditions, frequency estimates use considerable expert belief in determining how the controls affect the accident frequency. To evaluate and document beliefs about control effectiveness, they have modified a traditional Bayesian approach by using approximate reasoning (AR) to develop prior distributions. Their method produces accident frequency estimates that separately express the probabilistic results produced in Bayesian analysis and possibilistic results that reflect uncertainty about the prior estimates. Based on their experience using traditional methods, they feel that the AR approach better documents beliefs about the effectiveness of controls than if the beliefs are buried in Bayesian prior distributions. They have performed numerous expert elicitations in which probabilistic information was sought from subject matter experts not trained in probability. They find it much easier to elicit the linguistic variables and fuzzy set membership values used in AR than to obtain the probability distributions used in prior distributions directly from these experts because it better captures their beliefs and better expresses their uncertainties.
使用混合贝叶斯近似推理方法的风险分析
分析师有时被要求对具体事故的频率进行估计,而事故频率主要是由安全控制决定的。在这些条件下,频率估计在确定控制如何影响事故频率时使用了相当多的专家信念。为了评估和记录有关控制有效性的信念,他们通过使用近似推理(AR)来开发先验分布,从而修改了传统的贝叶斯方法。他们的方法产生事故频率估计,分别表示贝叶斯分析中产生的概率结果和反映先前估计的不确定性的可能性结果。根据他们使用传统方法的经验,他们认为AR方法比埋藏在贝叶斯先验分布中的信念更好地记录了有关控制有效性的信念。他们进行了许多专家问答,其中概率信息是从没有受过概率训练的主题专家那里寻求的。他们发现引出AR中使用的语言变量和模糊集成员值比直接从这些专家那里获得先验分布中使用的概率分布要容易得多,因为它更好地捕捉了他们的信念并更好地表达了他们的不确定性。
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