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Bayesian bivariate quantile regression

机译:贝叶斯二元分位数回归

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摘要

Quantile regression (QR) has become a widely used tool to study the impact of covariates on quantiles of a response distribution. QR provides a detailed description of the conditional response when considering a dense set of quantiles, without assuming a closed form for its distribution. The Bayesian version of QR, which can be implemented by considering the asymmetric Laplace distribution (ALD) as an auxiliary error distribution, is an attractive alternative to other methods because it returns knowledge on the whole parameter distribution instead of solely point estimations. While for the univariate case there has been a lot of development in the last few years, multivariate responses have only been treated to a little extent in the literature, especially in the Bayesian case. By using a multivariate version of the location scale mixture representation for the ALD, we are able to apply inference techniques developed for multivariate Gaussian models on multivariate quantile regression and make thus the impact of covariates on the quantiles of more than one dependent variable feasible. The model structure also facilitates the determination of conditional correlations between bivariate responses on different quantile levels after adjusting for covariate effects.
机译:分位数回归(QR)已成为研究协变量对响应分布分位数的影响的广泛使用的工具。 QR在考虑密集的分位数时提供了条件响应的详细描述,而无需假设其分布为封闭形式。 QR的贝叶斯版本可以通过将非对称拉普拉斯分布(ALD)视为辅助误差分布来实现,是其他方法的一种有吸引力的替代方法,因为它返回的是整个参数分布的知识,而不仅仅是点估计。尽管最近几年单变量案例有了很大的发展,但在文献中,尤其是在贝叶斯案例中,多变量响应只得到了很小程度的处理。通过使用ALD的位置尺度混合表示的多元版本,我们能够将针对多元高斯模型开发的推理技术应用于多元分位数回归,从而使协变量对多个因变量的分位数产生影响是可行的。在调整协变量效应之后,模型结构还有助于确定不同分位数水平上的双变量响应之间的条件相关性。

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