似然原理
估计员
经验似然
最大似然
计量经济学
记分测验
似然函数
限制最大似然
似然比检验
期望最大化算法
协变量
作者
Edwin Fong,Christopher Holmes
出处
期刊:Biometrika
[Oxford University Press]
日期:2020-06-01
卷期号:107 (2): 489-496
被引量:27
标识
DOI:10.1093/biomet/asz077
摘要
In Bayesian statistics, the marginal likelihood, also known as the evidence, is used to evaluate model fit as it quantifies the joint probability of the data under the prior. In contrast, non-Bayesian models are typically compared using cross-validation on held-out data, either through $k$-fold partitioning or leave-$p$-out subsampling. We show that the marginal likelihood is formally equivalent to exhaustive leave-$p$-out cross-validation averaged over all values of $p$ and all held-out test sets when using the log posterior predictive probability as the scoring rule. Moreover, the log posterior predictive is the only coherent scoring rule under data exchangeability. This offers new insight into the marginal likelihood and cross-validation and highlights the potential sensitivity of the marginal likelihood to the choice of the prior. We suggest an alternative approach using cumulative cross-validation following a preparatory training phase. Our work has connections to prequential analysis and intrinsic Bayes factors but is motivated through a different course.
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