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Objective Bayesian Model Selection in Generalized Additive Models With Penalized Splines

机译:带罚样条的广义可加模型的客观贝叶斯模型选择

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摘要

We propose an objective Bayesian approach to the selection of covariates and their penalized splines transformations in generalized additive models. The methodology is based on a combination of continuous mixtures of g-priors for model parameters and a multiplicity-correction prior for the models themselves. We introduce our approach in the normal model and extend it to nonnormal exponential families. A simulation study and an application with binary outcome is provided. An efficient implementation is available in the R package hypergsplines. Supplementary materials for this article are available online.
机译:我们提出了一种客观贝叶斯方法来选择广义加性模型中的协变量及其罚样条变换。该方法基于模型参数的g先验的连续混合和模型本身的多重校正的组合。我们在正常模型中介绍我们的方法,并将其扩展到非正常指数族。提供了模拟研究和具有二进制结果的应用程序。 R包hypergsplines中提供了有效的实现。可在线获得本文的补充材料。

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