Priors in Bayesian analyses often encode informative domain knowledge that can be useful in making the inference process more efficient. Occasionally, however, priors may be unrepresentative of the parameter values for a given dataset, which can result in inefficient parameter space exploration, or even incorrect inferences, particularly for nested sampling (NS) algorithms. Simply broadening the prior in such cases may be inappropriate or impossible in some applications. Hence our previous solution to this problem, known as posterior repartitioning (PR), redefines the prior and likelihood while keeping their product fixed, so that the posterior inferences and evidence estimates remain unchanged, but the efficiency of the NS process is significantly increased. In its most practical form, PR raises the prior to some power beta, which is introduced as an auxiliary variable that must be determined on a case-by-case basis, usually by lowering beta from unity according to some pre-defined `annealing schedule' until the resulting inferences converge to a consistent solution. Here we present a very simple yet powerful alternative Bayesian approach, in which beta is instead treated as a hyperparameter that is inferred from the data alongside the original parameters of the problem, and then marginalised over to obtain the final inference. We show through numerical examples that this Bayesian PR (BPR) method provides a very robust, self-adapting and computationally efficient `hands-off' solution to the problem of unrepresentative priors in Bayesian inference using NS. Moreover, unlike the original PR method, we show that even for representative priors BPR has a negligible computational overhead relative to standard nesting sampling, which suggests that it should be used as the default in all NS analyses.
翻译:贝叶西亚先前的分析常常将有助于提高推算过程效率的知情域知识编成法典。不过,偶尔,先行可能不代表特定数据集的参数值,这可能导致空间空间探索效率低下,甚至不正确的推论,特别是嵌套抽样算法。仅仅扩大先行范围,在某些应用中可能不合适或不可能。因此,我们以前对这一问题的解决方案,即后继再分配(PR),重新定义先前和可能性,同时保持产品固定,以便事后推论和证据估计保持不变,使事后推论和证据估计保持不变,但NS进程的效率显著提高。在最实际的形式中,PR会提高某些先导力,特别是嵌入式抽样算法,必须作为辅助变量在个案基础上加以确定,通常通过降低从统一到某些预先定义的“净化时间表 ”, 重新定义前期和可能性,同时重新定义其前期推论方法, 也就是将贝叶尔法的相对直系直系直系直系直系直系直系直系直系直系直系直系直系直系直系直系直系。