广义线性树:一种预测连续变量的灵活算法

Alberto Rodrigues Ferreira, Alex Akira Okuno
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引用次数: 0

摘要

基于树的模型是预测连续变量的常用回归方法。此外,广义线性模型(GLMs)在许多统计应用程序中是相当标准的,并为许多最常用的统计过程提供了泛化。然而,在大多数回归树方法中,最终节点只有一个理论模型与预测相关联,如多元线性回归、逻辑回归、多项式模型、泊松模型等。因此,我们提出了一种新的树方法,我们在估计树的每个叶节点上估计一个GLM,包括变量选择,新的超参数优化和树修剪。我们的方法,称为广义线性树(GLT),在实际数据集中与其他知名的回归方法相比具有竞争力,具有glm提供的优势和估计灵活性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generalized linear tree: a flexible algorithm for predicting continuous variables
Tree-based models are popular among regression methods to predict continuous variables. Also, Generalized Linear Models (GLMs) are pretty standard in many statistical applications and provide a generalization to many of the most commonly applied statistical procedures. However, in most regression tree methods, there is only one theoretical model associated for prediction in the final nodes, like multiple linear regression, logistic regressions, polynomial models, Poisson models, among others. We, therefore, propose a new tree method in which we estimate a GLM in each leaf node of the estimated tree including variable selection, new hyperparameters optimization, and tree pruning. Our method, called Generalized linear tree (GLT), has shown to be competitive compared to other well-known regression methods in real datasets, with the advantages and estimation flexibility provided by GLMs.
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