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Estimation and variable selection in nonparametric heteroscedastic regression

机译:非参数异方差回归中的估计和变量选择

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The article considers a Gaussian model with the mean and the variance modeled flexibly as functions of the independent variables. The estimation is carried out using a Bayesian approach that allows the identification of significant variables in the variance function, as well as averaging over all possible models in both the mean and the variance functions. The computation is carried out by a simulation method that is carefully constructed to ensure that it converges quickly and produces iterates from the posterior distribution that have low correlation. Real and simulated examples demonstrate that the proposed method works well. The method in this paper is important because (a) it produces more realistic prediction intervals than nonparametric regression estimators that assume a constant variance; (b) variable selection identifies the variables in the variance function that are important; (c) variable selection and model averaging produce more efficient prediction intervals than those obtained by regular nonparametric regression.
机译:本文考虑了具有均值和方差作为独立变量函数灵活建模的高斯模型。使用贝叶斯方法进行估计,该方法允许识别方差函数中的重要变量,并对均值和方差函数中所有可能的模型进行平均。计算是通过精心构造的仿真方法进行的,以确保其快速收敛并从具有低相关性的后验分布中产生迭代。实际和仿真实例表明,该方法行之有效。本文中的方法很重要,因为(a)与假定常数方差的非参数回归估计量相比,它产生更现实的预测间隔; (b)变量选择确定方差函数中重要的变量; (c)变量选择和模型平均产生的预测间隔比通过常规非参数回归获得的预测间隔更有效。

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