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Bayesian analysis for nonlinear regression model under skewed errors, with application in growth curves

机译:偏斜误差下非线性回归模型的贝叶斯分析及其在增长曲线中的应用

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We have considered a Bayesian approach for the nonlinear regression model by replacing the normal distribution on the error term by some skewed distributions, which account for both skewness and heavy tails or skewness alone. The type of data considered in this paper concerns repeated measurements taken in time on a set of individuals. Such multiple observations on the same individual generally produce serially correlated outcomes. Thus, additionally, our model does allow for a correlation between observations made from the same individual. We have illustrated the procedure using a data set to study the growth curves of a clinic measurement of a group of pregnant women from an obstetrics clinic in Santiago, Chile. Parameter estimation and prediction were carried out using appropriate posterior simulation schemes based in Markov Chain Monte Carlo methods. Besides the deviance information criterion (DIC) and the conditional predictive ordinate (CPO), we suggest the use of proper scoring rules based on the posterior predictive distribution for comparing models. For our data set, all these criteria chose the skew-t model as the best model for the errors. These DIC and CPO criteria are also validated, for the model proposed here, through a simulation study. As a conclusion of this study, the DIC criterion is not trustful for this kind of complex model.
机译:我们已经考虑了贝叶斯方法用于非线性回归模型,方法是将误差项上的正态分布替换为一些偏斜的分布,这些偏斜的分布既解决了偏斜又导致了粗尾或偏斜。本文考虑的数据类型涉及对一组个人及时进行的重复测量。对同一个人的这种多次观察通常会产生系列相关的结果。因此,此外,我们的模型还允许在同一个人的观察结果之间建立关联。我们使用数据集说明了该程序,该数据集用于研究来自智利圣地亚哥产科诊所的一组孕妇的诊所测量值的生长曲线。使用基于马尔可夫链蒙特卡罗方法的适当后验模拟方案进行参数估计和预测。除了偏差信息准则(DIC)和条件预测纵坐标(CPO),我们建议使用基于后验预测分布的适当评分规则来比较模型。对于我们的数据集,所有这些条件都选择了skew-t模型作为错误的最佳模型。这些DIC和CPO标准也通过仿真研究针对此处提出的模型进行了验证。作为本研究的结论,对于这种复杂模型,DIC标准是不可信的。

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