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Bayesian quantile regression using the skew exponential power distribution

机译:使用偏斜指数功率分布的贝叶斯分位数回归

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摘要

Traditional Bayesian quantile regression relies on the Asymmetric Laplace (AL) distribution due primarily to its satisfactory empirical and theoretical performances. However, the AL displays medium tails and it is not suitable for data characterized by strong deviations from the Gaussian hypothesis. An extension of the AL Bayesian quantile regression framework is proposed to account for fat tails using the Skew Exponential Power (SEP) distribution. Linear and Additive Models (AM) with penalized splines are considered to show the flexibility of the SEP in the Bayesian quantile regression context. Lasso priors are used in both cases to account for the problem of shrinking parameters when the parameters space becomes wide while Bayesian inference is implemented using a new adaptive Metropolis within Gibbs algorithm. Empirical evidence of the statistical properties of the proposed models is provided through several examples based on both simulated and real datasets. (C) 2018 Elsevier B.V. All rights reserved.
机译:传统的贝叶斯分位数回归依赖于主要原因的非对称LAPLACE(AL)分布,主要是其令人满意的经验和理论表演。然而,Al显示中等尾部,并且不适用于具有与高斯假设的强偏差的强烈偏差的数据。 Al Bayesian分位数回归框架的延伸旨在考虑使用偏斜指数功率(SEP)分布的脂肪尾。用惩罚样条素的线性和添加剂模型(AM)被认为显示SEP在贝叶斯分位数回归上下文中的灵活性。在两种情况下,套索前沿用于在参数空间变宽时缩小参数的问题,而在GIBBS算法中使用新的自适应Metropolis实现贝叶斯推断。通过基于模拟和实际数据集的若干示例提供所提出模型的统计特性的经验证据。 (c)2018 Elsevier B.v.保留所有权利。

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