Ensembles of Bagged TAO Trees Consistently Improve over Random Forests, AdaBoost and Gradient Boosting

M. A. Carreira-Perpiñán, Arman Zharmagambetov
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引用次数: 24

Abstract

Ensemble methods based on trees, such as Random Forests, AdaBoost and gradient boosting, are widely recognized as among the best off-the-shelf classifiers: they typically achieve state-of-the-art accuracy in many problems with little effort in tuning hyperparameters, and they are often used in applications, possibly combined with other methods such as neural nets. While many variations of forest methods exist, using different diversity mechanisms (such as bagging, feature sampling or boosting), nearly all rely on training individual trees in a highly suboptimal way using greedy top-down tree induction algorithms such as CART or C5.0. We study forests where each tree is trained on a bootstrapped or random sample but using the recently proposed tree alternating optimization (TAO), which is able to learn trees that have both fewer nodes and lower error. The better optimization of individual trees translates into forests that achieve higher accuracy but using fewer, smaller trees with oblique nodes. We demonstrate this in a range of datasets and with a careful study of the complementary effect of optimization and diversity in the construction of the forest. These bagged TAO trees improve consistently and by a considerable margin over Random Forests, AdaBoost, gradient boosting and other forest algorithms in every single dataset we tried.
在随机森林、AdaBoost和梯度增强的基础上,袋装TAO树的整体性能不断提高
基于树的集成方法,如随机森林、AdaBoost和梯度增强,被广泛认为是最好的现成分类器之一:它们通常在许多问题上达到最先进的精度,而在调整超参数方面几乎没有什么努力,它们经常在应用中使用,可能与其他方法(如神经网络)结合使用。虽然存在许多不同的森林方法,使用不同的多样性机制(如bagging, feature sampling或boosting),但几乎所有方法都依赖于使用贪婪的自上而下的树归纳算法(如CART或C5.0)以高度次优的方式训练单个树。我们研究的森林中,每棵树都是在一个自举或随机样本上训练的,但使用了最近提出的树交替优化(TAO),它能够学习节点更少、误差更低的树。对单个树进行更好的优化可以转化为使用更少、更小的斜节点树实现更高精度的森林。我们在一系列数据集中证明了这一点,并仔细研究了森林建设中优化和多样性的互补效应。在我们尝试过的每一个数据集上,这些袋装TAO树都比随机森林、AdaBoost、梯度增强和其他森林算法有显著的提高。
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