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Joint Estimation of Quantile Planes Over Arbitrary Predictor Spaces

机译:任意预测空间上分位数平面的联合估计

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摘要

In spite of the recent surge of interest in quantile regression, joint estimation of linear quantile planes remains a great challenge in statistics and econometrics. We propose a novel parameterization that characterizes any collection of noncrossing quantile planes over arbitrarily shaped convex predictor domains in any dimension by means of unconstrained scalar, vector and function valued parameters. Statistical models based on this parameterization inherit a fast computation of the likelihood function, enabling penalized likelihood or Bayesian approaches to model fitting. We introduce a complete Bayesian methodology by using Gaussian process prior distributions on the function valued parameters and develop a robust and efficient Markov chain Monte Carlo parameter estimation. The resulting method is shown to offer posterior consistency under mild tail and regularity conditions. We present several illustrative examples where the new method is compared against existing approaches and is found to offer better accuracy, coverage and model fit. Supplementary materials for this article are available online.
机译:尽管最近对分位数回归的兴趣激增,但线性分位数平面的联合估计仍然是统计和计量经济学中的巨大挑战。我们提出了一种新颖的参数化,该参数化通过无约束的标量,向量和函数值参数来表征任意维度上任意形状的凸预测域上的非交叉分位数平面的任何集合。基于此参数化的统计模型继承了似然函数的快速计算,可采用惩罚似然或贝叶斯方法进行模型拟合。我们通过对函数值参数使用高斯过程先验分布来介绍完整的贝叶斯方法,并开发出鲁棒且有效的马尔可夫链蒙特卡洛参数估计。结果表明,该方法在轻度的尾巴和规则性条件下具有后部一致性。我们提供了几个说明性示例,这些示例将新方法与现有方法进行了比较,并发现它们提供了更好的准确性,覆盖范围和模型拟合度。可在线获得本文的补充材料。

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