Modelling monotonic effects of ordinal predictors in Bayesian regression models.

Paul-Christian Bürkner, Emmanuel Charpentier
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引用次数: 70

Abstract

Ordinal predictors are commonly used in regression models. They are often incorrectly treated as either nominal or metric, thus under- or overestimating the information contained. Such practices may lead to worse inference and predictions compared to methods which are specifically designed for this purpose. We propose a new method for modelling ordinal predictors that applies in situations in which it is reasonable to assume their effects to be monotonic. The parameterization of such monotonic effects is realized in terms of a scale parameter b representing the direction and size of the effect and a simplex parameter ς modelling the normalized differences between categories. This ensures that predictions increase or decrease monotonically, while changes between adjacent categories may vary across categories. This formulation generalizes to interaction terms as well as multilevel structures. Monotonic effects may be applied not only to ordinal predictors, but also to other discrete variables for which a monotonic relationship is plausible. In simulation studies we show that the model is well calibrated and, if there is monotonicity present, exhibits predictive performance similar to or even better than other approaches designed to handle ordinal predictors. Using Stan, we developed a Bayesian estimation method for monotonic effects which allows us to incorporate prior information and to check the assumption of monotonicity. We have implemented this method in the R package brms, so that fitting monotonic effects in a fully Bayesian framework is now straightforward.

贝叶斯回归模型中有序预测因子单调效应的建模。
序数预测器通常用于回归模型。它们通常被错误地视为标称或度量,从而低估或高估了所包含的信息。与专门为此目的设计的方法相比,这种做法可能导致更差的推断和预测。我们提出了一种新的方法来模拟有序预测,适用于情况下,它是合理的假设其影响是单调的。这种单调效应的参数化是通过表示效果的方向和大小的尺度参数b和模拟类别之间归一化差异的单纯形参数ς来实现的。这确保了预测单调地增加或减少,而相邻类别之间的变化可能因类别而异。这个公式推广到相互作用项和多层结构。单调效应不仅可以应用于有序的预测因子,也可以应用于其他可能存在单调关系的离散变量。在模拟研究中,我们表明该模型经过了很好的校准,如果存在单调性,则显示出与处理有序预测器的其他方法相似甚至更好的预测性能。使用Stan,我们开发了单调效应的贝叶斯估计方法,该方法允许我们合并先验信息并检查单调性假设。我们已经在R包brms中实现了这种方法,因此在完全贝叶斯框架中拟合单调效应现在很简单。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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