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A Bayesian Approach for Predicting With Polynomial Regression of Unknown Degree

机译:多项式多项式回归的贝叶斯预测方法

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摘要

This article compares three methods for computing the posterior probabilities of the possible orders in polynomial regression models. These posterior probabilities are used for forecasting using Bayesian model averaging. It is shown that Bayesian model averaging provides a closer relationship between the theoretical coverage of the high-density predictive interval (HDP1) and the observed coverage than those corresponding to selecting the best model. The performance of the different procedures is illustrated with simulations and some known engineering data.
机译:本文比较了三种计算多项式回归模型中可能阶数的后验概率的方法。这些后验概率用于使用贝叶斯模型平均进行预测。结果表明,与选择最佳模型所对应的模型相比,贝叶斯模型平均模型在高密度预测区间(HDP1)的理论覆盖率和观测覆盖率之间提供了更紧密的关系。通过仿真和一些已知的工程数据说明了不同过程的执行情况。

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