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Model selection in quantile regression models

机译:分位数回归模型中的模型选择

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Lasso methods are regularisation and shrinkage methods widely used for subset selection and estimation in regression problems. From a Bayesian perspective, the Lasso-type estimate can be viewed as a Bayesian posterior mode when specifying independent Laplace prior distributions for the coefficients of independent variables. A scale mixture of normal priors can also provide an adaptive regularisation method and represents an alternative model to the Bayesian Lasso-type model. In this paper, we assign a normal prior with mean zero and unknown variance for each quantile coefficient of independent variable. Then, a simple Markov Chain Monte Carlo-based computation technique is developed for quantile regression (QReg) models, including continuous, binary and left-censored outcomes. Based on the proposed prior, we propose a criterion for model selection in QReg models. The proposed criterion can be applied to classical least-squares, classical QReg, classical Tobit QReg and many others. For example, the proposed criterion can be applied to rq (), 1m () and crq () which is available in an R package called Brq. Through simulation studies and analysis of a prostate cancer data set, we assess the performance of the proposed methods. The simulation studies and the prostate cancer data set analysis confirm that our methods perform well, compared with other approaches.
机译:套索方法是正则化和收缩方法,广泛用于回归问题中的子集选择和估计。从贝叶斯的角度来看,当为自变量的系数指定独立的拉普拉斯先验分布时,拉索型估计可以视为贝叶斯后验模式。正常先验的比例混合还可以提供自适应正则化方法,并表示贝叶斯套索类型模型的替代模型。在本文中,我们为自变量的每个分位数系数分配了一个均值零且方差未知的正态先验。然后,针对分位数回归(QReg)模型开发了一种简单的基于Markov Chain Monte Carlo的计算技术,包括连续,二进制和左删截结果。基于提出的先验,我们提出了QReg模型中模型选择的准则。所提出的标准可以应用于经典最小二乘,经典QReg,经典Tobit QReg等。例如,建议的标准可以应用于rq(),1m()和crq(),这在称为Brq的R包中可用。通过模拟研究和对前列腺癌数据集的分析,我们评估了所提出方法的性能。仿真研究和前列腺癌数据集分析证实,与其他方法相比,我们的方法效果很好。

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