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Effect on Prediction when Modeling Covariates in Bayesian Nonparametric Models

机译:在贝叶斯非参数模型中对协变量建模时对预测的影响

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摘要

In biomedical research, it is often of interest to characterize biologic processes giving rise to observations and to make predictions of future observations. Bayesian nonparametric methods provide a means for carrying out Bayesian inference making as few assumptions about restrictive parametric models as possible. There are several proposals in the literature for extending Bayesian nonparametric models to include dependence on covariates. Limited attention, however, has been directed to the following two aspects. In this article, we examine the effect on fitting and predictive performance of incorporating covariates in a class of Bayesian nonparametric models by one of two primary ways: either in the weights or in the locations of a discrete random probability measure. We show that different strategies for incorporating continuous covariates in Bayesian nonparametric models can result in big differences when used for prediction, even though they lead to otherwise similar posterior inferences. When one needs the predictive density, as in optimal design, and this density is a mixture, it is better to make the weights depend on the covariates. We demonstrate these points via a simulated data example and in an application in which one wants to determine the optimal dose of an anticancer drug used in pediatric oncology.
机译:在生物医学研究中,通常有趣的是表征引起观察的生物学过程并预测未来的观察结果。贝叶斯非参数方法提供了一种进行贝叶斯推断的方法,该方法使关于限制性参数模型的假设尽可能少。文献中提出了一些扩展贝叶斯非参数模型以包括对协变量的依赖性的建议。但是,注意力集中在以下两个方面。在本文中,我们通过以下两种主要方法之一研究了在一类贝叶斯非参数模型中合并协变量对拟合和预测性能的影响:权重或离散随机概率度量的位置。我们表明,在贝叶斯非参数模型中合并连续协变量的不同策略在用于预测时会导致巨大差异,即使它们会导致其他类似的后验推断。当需要预测密度时,如在最佳设计中,并且此密度是混合的,最好使权重取决于协变量。我们通过一个模拟数据示例以及在一个应用中要确定小儿肿瘤学中使用的抗癌药物的最佳剂量的应用来证明这些观点。

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