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A general approach to heteroscedastic linear regression

机译:异方差线性回归的一般方法

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Our article presents a general treatment of the linear regression model, in which the error distribution is modelled nonparametrically and the error variances may be heteroscedastic, thus eliminating the need to transform the dependent variable in many data sets. The mean and variance components of the model may be either parametric or nonparametric, with parsimony achieved through variable selection and model averaging. A Bayesian approach is used for inference with priors that are data-based so that estimation can be carried out automatically with minimal input by the user. A Dirichlet process mixture prior is used to model the error distribution nonparametrically; when there are no regressors in the model, the method reduces to Bayesian density estimation, and we show that in this case the estimator compares favourably with a well-regarded plug-in density estimator. We also consider a method for checking the fit of the full model. The methodology is applied to a number of simulated and real examples and is shown to work well.
机译:我们的文章介绍了线性回归模型的一般处理方法,该模型中的误差分布是非参数建模的,并且误差方差可能是异方差的,因此无需转换许多数据集中的因变量。模型的均值和方差成分可以是参数性的也可以是非参数性的,通过变量选择和模型平均可以达到简约性。贝叶斯方法用于基于数据的先验推断,因此可以在用户最少输入的情况下自动进行估计。 Dirichlet过程混合先验用于非参数化误差分布建模;当模型中没有回归变量时,该方法将简化为贝叶斯密度估计,并且我们证明在这种情况下,估计器与公认的插件密度估计器相比具有优势。我们还考虑了一种检查完整模型拟合度的方法。该方法适用于许多模拟和真实示例,并且显示出很好的效果。

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