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Inference with three-level prior distributions in quantile regression problems

机译:分位数回归问题中的三级先验分布推断

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摘要

In this paper, we propose a three level hierarchical Bayesian model for variable selection and estimation in quantile regression problems. Specifically, at the first level we consider a zero mean normal priors for the coefficients with unknown variance parameters. At the second level, we specify two different priors for the unknown variance parameters which introduce two different models producing different levels of sparsity. Then, at the third level we suggest joint improper priors for the unknown hyperparameters assuming they are independent. Simulations and Boston Housing data are utilized to compare the performance of our models with six existing models. The results indicate that our models perform good in the simulations and Boston Housing data.
机译:在本文中,我们提出了一个三级分层贝叶斯模型,用于分位数回归问题中的变量选择和估计。具体来说,在第一级,我们考虑具有未知方差参数的系数的零平均正态先验。在第二层,我们为未知方差参数指定了两个不同的先验,这引入了两个产生不同稀疏度的模型。然后,在第三级,假设未知超参数是独立的,我们建议联合不正确的先验。利用仿真和波士顿房屋数据将我们的模型的性能与六个现有模型进行比较。结果表明,我们的模型在模拟和波士顿房屋数据中表现良好。

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