Bayesian Binary reciprocal LASSO quantile regression (with practical application)

Mohammet T. Kahnger Al-mayali
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Abstract

Quantile regression is one of the methods that has taken a wide space in application in the previous two decades because of the attractive features of these methods to researchers, as it is not affected by outliers values, meaning that it is considered one of the robust methods, and it gives more details of the effect of explanatory variables on the dependent variable.In this paper, a Bayesian hierarchical model for variable selection and estimation in the context of binary quantile regression is proposed. Current approaches to variable selection in the context of binary classification are sensitive to outliers, heterogeneous values, and other anomalies. The proposed method in this study overcomes these problems in an attractive and direct way.
贝叶斯二元倒数LASSO分位数回归(附实际应用)
分位数回归是近二十年来得到广泛应用的方法之一,因为这些方法不受异常值的影响,这意味着它被认为是鲁棒性方法之一,并且它更详细地说明了解释变量对因变量的影响。本文提出了一种用于二元分位数回归的贝叶斯层次模型。当前二元分类中变量选择的方法对异常值、异质值和其他异常非常敏感。本研究提出的方法以一种吸引人的、直接的方式克服了这些问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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