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Noncrossing structured additive multiple-output Bayesian quantile regression models

机译:非交叉结构添加剂多输出贝叶斯分位数回归模型

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摘要

Quantile regression models are a powerful tool for studying different points of the conditional distribution of univariate response variables. Their multivariate counterpart extension though is not straightforward, starting with the definition of multivariate quantiles. We propose here a flexible Bayesian quantile regression model when the response variable is multivariate, where we are able to define a structured additive framework for all predictor variables. We build on previous ideas considering a directional approach to define the quantiles of a response variable with multiple outputs, and we define noncrossing quantiles in every directional quantile model. We define a Markov chain Monte Carlo (MCMC) procedure for model estimation, where the noncrossing property is obtained considering a Gaussian process design to model the correlation between several quantile regression models. We illustrate the results of these models using two datasets: one on dimensions of inequality in the population, such as income and health; the second on scores of students in the Brazilian High School National Exam, considering three dimensions for the response variable.
机译:分位数回归模型是研究单变量响应变量的条件分布的不同点的强大工具。它们的多变量对手延伸虽然并不简单,从多元量级定义开始。我们在这里提出了一个灵活的贝叶斯分位数回归模型,当响应变量是多变量的,在那里我们能够为所有预测变量定义结构化添加剂框架。考虑到定向方法以定义多个输出的定向方法来构建先前的想法,我们在每个方向定位模型中定义了非交易量。我们为模型估计定义了Markov链蒙特卡罗(MCMC)程序,其中考虑到高斯过程设计来获得非交叉属性以模拟几个分位数回归模型之间的相关性。我们使用两个数据集说明了这些模型的结果:人口中不等式的维度,如收入和健康;在巴西高中全国考试中的学生分数,考虑到响应变量的三个维度。

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