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A sampling-based computational strategy for the representation of epistemic uncertainty in model predictions with evidence theory

机译:基于证据理论的模型预测中基于认知的不确定性表示的基于采样的计算策略

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Evidence theory provides an alternative to probability theory for the representation of epistemic uncertainty in model predictions that derives from epistemic uncertainty in model inputs, where the descriptor epistemic is used to indicate uncertainty that derives from a lack of knowledge with respect to the appropriate values to use for various inputs to the model. The potential benefit, and hence appeal, of evidence theory is that it allows a less restrictive specification of uncertainty than is possible within the axiomatic structure on which probability theory is based. Unfortunately, the propagation of an evidence theory representation for uncertainty through a model is more computationally demanding than the propagation of a probabilistic representation for uncertainty, with this difficulty constituting a serious obstacle to the use of evidence theory in the representation of uncertainty in predictions obtained from computationally intensive models. This presentation describes and illustrates a sampling-based computational strategy for the representation of epistemic uncertainty in model predictions with evidence theory. Preliminary trials indicate that the presented strategy can be used to propagate uncertainty representations based on evidence theory in analysis situations where naive sampling-based (i.e., unsophisticated Monte Carlo) procedures are impracticable due to computational cost.
机译:证据理论为概率模型的模型预测中的不确定性表示提供了概率论的一种替代方法,该模型不确定性是由模型输入中的不确定性引起的,其中描述符的认知性用于表示由于缺乏对使用的适当值的知识而引起的不确定性用于模型的各种输入。证据理论的潜在好处和吸引力在于,它比不确定性理论所基于的公理结构中所允许的不确定性限制要少。不幸的是,通过模型传播不确定性的证据理论表示要比通过不确定性概率表示的传播对计算的要求更高,因为此困难严重阻碍了将证据理论用于预测不确定性的预测中计算密集型模型。本演示文稿描述并说明了基于抽样的计算策略,用于通过证据理论在模型预测中表示认知不确定性。初步试验表明,在由于计算成本而无法采用基于天真的抽样(即简单的蒙特卡洛)程序的分析情况下,所提出的策略可用于基于证据理论传播不确定性表示。

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