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Flexible Prior Elicitation via the Prior Predictive Distribution

机译:通过先前的预测分布灵活的先验诱导

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The prior distribution for the unknown model parameters plays a crucial role in the process of statistical inference based on Bayesian methods. However, specifying suitable priors is often difficult even when detailed prior knowledge is available in principle. The challenge is to express quantitative information in the form of a probability distribution. Prior elicitation addresses this question by extracting subjective information from an expert and transforming it into a valid prior. Most existing methods, however, require information to be provided on the unobservable parameters, whose effect on the data generating process is often complicated and hard to understand. We propose an alternative approach that only requires knowledge about the observable outcomes - knowledge which is often much easier for experts to provide. Building upon a principled statistical framework, our approach utilizes the prior predictive distribution implied by the model to automatically transform experts judgements about plausible outcome values to suitable priors on the parameters. We also provide computational strategies to perform inference and guidelines to facilitate practical use.
机译:未知模型参数的先前分配在基于贝叶斯方法的统计推理过程中起着至关重要的作用。然而,即使在原则上提供详细的先验知识时,指定合适的前锋通常也很困难。挑战是以概率分布的形式表达定量信息。先前阐述通过从专家中提取主观信息并将其转换为有效的先前来解决这个问题。但是,大多数现有方法都需要在不可观察的参数上提供信息,其对数据生成过程的影响通常很复杂,很难理解。我们提出了一种替代方法,只需要了解可观察结果的知识 - 专家提供的经常更容易。在原则统计框架上建立,我们的方法利用模型所暗示的预测性分布,以自动改变关于合理结果值的专家判断,以适当的参数上的Priorors。我们还提供计算策略,以便执行推理和指导方针,以促进实际使用。

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