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Partially linear censored regression models using heavy-tailed distributions: A Bayesian approach

机译:使用重尾分布的部分线性删失回归模型:贝叶斯方法

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摘要

Linear regression models where the response variable is censored are often considered in statistical analysis. A parametric relationship between the response variable and covariates and normality of random errors are assumptions typically considered in modeling censored responses. In this context, the aim of this paper is to extend the normal censored regression model by considering on one hand that the response variable is linearly dependent on some covariates whereas its relation to other variables is characterized by nonparametric functions, and on the other hand that error terms of the regression model belong to a class of symmetric heavy-tailed distributions capable of accommodating outliers and/or influential observations in a better way than the normal distribution. We achieve a fully Bayesian inference using pth-degree spline smooth functions to approximate the nonparametric functions. The likelihood function is utilized to compute not only some Bayesian model selection measures but also to develop Bayesian case-deletion influence diagnostics based on the q-divergence measures. The newly developed procedures are illustrated with an application and simulated data.
机译:统计分析中通常会考虑审查响应变量的线性回归模型。响应变量与协变量之间的参数关系以及随机误差的正态性通常是在对审查的响应进行建模时所考虑的假设。在这种情况下,本文的目的是通过考虑响应变量线性依赖于某些协变量,而其与其他变量的关系以非参数函数为特征,从而扩展正态删失回归模型。回归模型的误差项属于一类对称的重尾分布,能够以比正态分布更好的方式容纳离群值和/或有影响的观测值。我们使用pth度样条平滑函数近似非参数函数来实现完全贝叶斯推理。利用似然函数不仅可以计算一些贝叶斯模型选择度量,而且可以基于q散度度量来开发贝叶斯案例删除影响诊断。通过应用程序和仿真数据说明了新开发的过程。

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