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Quantile regression in varying-coefficient models: non-crossing quantile curves and heteroscedasticity

机译:变化系数模型中的量化回归:非交叉量子曲线和异染性

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Quantile regression is an important tool for describing the characteristics of conditional distributions. Population conditional quantile functions cannot cross for different quantile orders. Unfortunately estimated regression quantile curves often violate this and cross each other, which can be very annoying for interpretations and further analysis. In this paper we are concerned with flexible varying-coefficient modelling, and develop methods for quantile regression that ensure that the estimated quantile curves do not cross. A second aim of the paper is to allow for some heteroscedasticity in the error modelling, and to also estimate the associated variability function. We investigate the finite-sample performances of the discussed methods via simulation studies. Some applications to real data illustrate the use of the methods in practical settings.
机译:定量回归是描述条件分布特性的重要工具。 人口条件分位数功能不能交叉不同的分位式订单。 遗憾的是,估计的回归量码曲线经常违反这个并相互交叉,这对解释和进一步分析来说非常烦人。 在本文中,我们涉及灵活的变化系数建模,并开发用于量子回归的方法,以确保估计的定位曲线不会交叉。 纸张的第二个目的是允许在误差建模中允许一些异源性,并且还估计相关的变异函数。 我们通过模拟研究调查讨论的方法的有限样本性能。 一些应用于实际数据的应用程序说明了在实际设置中使用方法。

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