While the importance of prior selection is well understood, establishing guidelines for selecting priors in hierarchical models has remained an active, and sometimes contentious, area of Bayesian methodology research. Choices of hyperparameters for individual families of priors are often discussed in the literature, but rarely are different families of priors compared under similar models and hyperparameters. Using simulated data, we evaluate the performance of inverse gamma and half-$t$ priors for estimating the standard deviation of random effects in three hierarchical models: the 8-schools model, a random intercepts longitudinal model, and a simple multiple outcomes model. We compare the performance of the two prior families using a range of prior hyperparameters, some of which have been suggested in the literature, and others that allow for a direct comparison of pairs of half-$t$ and inverse-gamma priors. Estimation of very small values of the random effect standard deviation led to convergence issues especially for the half-$t$ priors. For most settings, we found that the posterior distribution of the standard deviation had smaller bias under half-$t$ priors than under their inverse-gamma counterparts. Inverse gamma priors generally gave similar coverage but had smaller interval lengths than their half-$t$ prior counterparts. Our results for these two prior families will inform prior specification for hierarchical models, allowing practitioners to better align their priors with their respective models and goals.
翻译:虽然事先选择的重要性已广为人知,但为选择等级模型中的前科制定准则仍然是巴耶斯人方法研究的一个积极、有时有争议的领域,文献中经常讨论前科家庭选择超参数的问题,但很少是前科家庭的不同家庭,在类似模型和超参数模型下比较。使用模拟数据,我们评估了反伽马和半美元前科的性能,以估计三种等级模型中随机效应的标准偏差:8-学校模型、随机拦截纵向模型和简单多重结果模型。我们比较了前两个家族的性能,使用一系列前前科家庭的超参数,有些在文献中曾提出过,而另一些则允许直接比较半美元和反伽马先科的对子。对随机影响标准偏差的极小值估计导致特别是半美元前科的趋同问题。在多数情况下,我们发现标准偏差的后科分布的偏差在半美元前半美元前科中的偏差比前半美元前科数要小,但前半数前科比前科的前科更细。我们之前的对等前前科的对等的对等的对等的对等的对等对等的比较有较细。