Distribution-Free Location-Scale Regression

Sandra Siegfried, Lucas Kook, T. Hothorn
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引用次数: 4

Abstract

We introduce a generalized additive model for location, scale, and shape (GAMLSS) next of kin aiming at distribution-free and parsimonious regression modelling for arbitrary outcomes. We replace the strict parametric distribution formulating such a model by a transformation function, which in turn is estimated from data. Doing so not only makes the model distribution-free but also allows to limit the number of linear or smooth model terms to a pair of location-scale predictor functions. We derive the likelihood for continuous, discrete, and randomly censored observations, along with corresponding score functions. A plethora of existing algorithms is leveraged for model estimation, including constrained maximum-likelihood, the original GAMLSS algorithm, and transformation trees. Parameter interpretability in the resulting models is closely connected to model selection. We propose the application of a novel best subset selection procedure to achieve especially simple ways of interpretation. All techniques are motivated and illustrated by a collection of applications from different domains, including crossing and partial proportional hazards, complex count regression, non-linear ordinal regression, and growth curves. All analyses are reproducible with the help of the"tram"add-on package to the R system for statistical computing and graphics.
无分布位置尺度回归
我们引入了一种广义的位置、尺度和形状的加性模型(GAMLSS),旨在为任意结果建立无分布和简洁的回归模型。我们用一个从数据中估计出来的转换函数来代替严格的参数分布。这样做不仅使模型无分布,而且还允许将线性或平滑模型项的数量限制为一对位置尺度预测函数。我们推导出连续、离散和随机删减观测值的似然,以及相应的分数函数。大量现有算法被用于模型估计,包括约束最大似然、原始GAMLSS算法和转换树。结果模型中的参数可解释性与模型选择密切相关。我们提出了一种新的最佳子集选择程序的应用,以实现特别简单的解释方法。所有的技术都是由来自不同领域的一系列应用驱动和说明的,包括交叉和部分比例风险、复计数回归、非线性有序回归和增长曲线。在R系统的统计计算和图形的“tram”附加包的帮助下,所有的分析都是可重复的。
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