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Choosing Priors for Constrained Analysis of Variance: Methods Based on Training Data

机译:选择方差约束分析的先验:基于训练数据的方法

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This article combines the best of both objective and subjective Bayesian inference in specifying priors for inequality and equality constrained analysis of variance models. Objectivity can be found in the use of training data to specify a prior distribution, subjectivity can be found in restrictions on the prior to formulate models. The aim of this article is to find the best model in a set of models specified using inequality and equality constraints on the model parameters. For the evaluation of the models an encompassing prior approach is used. The advantage of this approach is that only a prior for the unconstrained encompassing model needs to be specified. The priors for all constrained models can be derived from this encompassing prior. Different choices for this encompassing prior will be considered and evaluated.
机译:本文结合了客观和主观贝叶斯推理的优点,为不等式和等式约束方差分析指定先验。客观性可以在使用训练数据指定先验分布中找到,主观性可以在对模型模型的先验限制中找到。本文的目的是在使用模型参数的不等式和等式约束指定的一组模型中找到最佳模型。为了评估模型,使用了一种涵盖性的先验方法。这种方法的优势在于,只需要指定无约束包围模型的先验即可。所有约束模型的先验都可以从该涵盖先验中得出。将考虑和评估此涵盖先验的不同选择。

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