There has been increased interest in using prior information in statistical analyses. For example, in rare diseases, it can be difficult to establish treatment efficacy based solely on data from a prospective study due to low sample sizes. To overcome this issue, an informative prior for the treatment effect may be elicited. We develop a novel extension of the conjugate prior of Chen and Ibrahim (2003) that enables practitioners to elicit a prior prediction for the mean response for generalized linear models, treating the prediction as random. We refer to the hierarchical prior as the hierarchical prediction prior. For i.i.d. settings and the normal linear model, we derive cases for which the hyperprior is a conjugate prior. We also develop an extension of the HPP in situations where summary statistics from a previous study are available, drawing comparisons with the power prior. The HPP allows for discounting based on the quality of individual level predictions, having the potential to provide efficiency gains (e.g., lower MSE) where predictions are incompatible with the data. An efficient Markov chain Monte Carlo algorithm is developed. Applications illustrate that inferences under the HPP are more robust to prior-data conflict compared to selected non-hierarchical priors.
翻译:例如,在罕见疾病中,由于样本规模小,我们很难仅仅根据未来研究的数据来确定治疗效率。为了克服这一问题,可以先征求治疗效果的信息。我们开发了陈氏和易卜拉欣(2003年)之前的共鸣的新扩展,使从业人员能够对一般线性模型的平均反应进行事先预测,将预测视为随机。我们把先前的等级称为先前的等级预测。对于一.一.d.设置和正常线性模型,我们得出超大主机是以前合金的病例。我们还开发了HPP的扩展,在具备先前研究的简要统计数据的情况下,与以前的力量进行比较。HPP允许根据个别水平预测的质量进行贴现,在预测与数据不相符的情况下,提供效率收益(例如低MSE)的潜力。高效的Markov连锁Monte Carlo算法是开发的。应用程序显示,HPP下的推论比选定的非结构之前的数据冲突更为可靠。