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Bayesian Modeling of Censored Partial Linear Models using Scale-Mixtures of Normal Distributions

机译:贝叶斯建模审查的审查部分线性模型使用正常分布规模混合

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Regression models where the dependent variable is censored (limited) are usually considered in statistical analysis. Particularly, the case of a truncation to the left of zero and a normality assumption for the error terms is studied in detail by [1] in the well known Tobit model. In the present article, this typical censored regression model is extended by considering a partial linear model with errors belonging to the class of scale mixture of normal distributions. We achieve a fully Bayesian inference by adopting a Metropolis algorithm within a Gibbs sampler. 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. We evaluate the performances of the proposed methods with simulated data. In addition, we present an application in order to know what type of variables affect the income of housewives.
机译:审查受抚养变量(有限的)的回归模型通常在统计分析中考虑。特别地,在众所周知的TOBBBBET模型中,通过[1]详细研究了对零左侧的截断和误差术语的正常假设的情况。在本文中,通过考虑具有属于正常分布的规模混合等级的误差的部分线性模型来扩展该典型的缩短回归模型。我们通过在GIBBS采样器中采用Metropolis算法来实现完全贝叶斯推断。可能性函数不仅用于计算一些贝叶斯模型选择措施,还用于基于Q分歧措施开发贝叶斯案例删除影响诊断。我们评估了具有模拟数据的提出方法的性能。此外,我们提出了一个申请,以便知道什么类型的变量影响家庭主妇的收入。

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