It is often of interest to combine available estimates of a similar quantity from multiple data sources. When the corresponding variances of each estimate are also available, a model should take into account the uncertainty of the estimates themselves as well as the uncertainty in the estimation of variances. In addition, if there exists a strong association between estimates and their variances, the correlation between these two quantities should also be considered. In this paper, we propose a bivariate hierarchical Bayesian model that jointly models the estimates and their estimated variances assuming a correlation between these two measures. We conduct simulations to explore the performance of the proposed bivariate Bayesian model and compare it to other commonly used methods under different correlation scenarios. The proposed bivariate Bayesian model has a wide range of applications. We illustrate its application in three very different areas: PET brain imaging studies, meta-analysis, and small area estimation.
翻译:将多种数据来源的类似数量的现有估计数合并起来往往很有意义。当还存在每项估计数的相应差异时,模型应考虑到估计数本身的不确定性以及差异估计的不确定性。此外,如果估计数及其差异之间存在强烈的联系,那么也应考虑这两个数量之间的关联。在本文件中,我们提出一个双轨的贝叶斯等级模型,共同模拟估计数及其估计差异,假设这两项措施之间的相互关系。我们进行模拟,以探索拟议的双轨贝叶斯模型的性能,并将其与不同相关假设情景下的其他常用方法进行比较。拟议的双轨的贝叶斯模型有广泛的应用。我们举例说明其在三个非常不同的领域的应用:PET脑成像研究、元分析和小面积估计。