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On Valid Uncertainty Quantification About a Model

机译:关于模型的有效不确定性量化

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Inference on parameters within a given model is familiar, as is ranking different models for the purpose of selection. Less familiar, however, is the quantification of uncertainty about the models themselves. A Bayesian approach provides a posterior distribution for the model but it comes with no validity guarantees, and, therefore, is only suited for ranking and selection. In this paper, I will present an alternative way to view this model uncertainty problem, through the lens of a valid inferential model based on random sets and non-additive beliefs. Specifically, I will show that valid uncertainty quantification about a model is attainable within this framework in general, and highlight the benefits in a classical signal detection problem.
机译:对给定模型中的参数的推断是熟悉的,因为为选择的目的排名不同的模型。然而,不太熟悉,是对模型本身的不确定性的量化。贝叶斯方法为该模型提供了后验分布,但没有有效性保证,因此,仅适用于排名和选择。在本文中,我将通过基于随机集和非加法信念的有效推理模型的镜头来提出一种替代方法来查看该模型不确定性问题。具体地,我将显示关于该模型的有效不确定性量化通常在该框架内达到,并且突出了经典信号检测问题中的益处。

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