【2h】

Building more accurate decision trees with the additive tree

机译:用加性树构建更准确的决策树

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摘要

The expansion of machine learning to high-stakes application domains such as medicine, finance, and criminal justice, where making informed decisions requires clear understanding of the model, has increased the interest in interpretable machine learning. The widely used Classification and Regression Trees (CART) have played a major role in health sciences, due to their simple and intuitive explanation of predictions. Ensemble methods like gradient boosting can improve the accuracy of decision trees, but at the expense of the interpretability of the generated model. Additive models, such as those produced by gradient boosting, and full interaction models, such as CART, have been investigated largely in isolation. We show that these models exist along a spectrum, revealing previously unseen connections between these approaches. This paper introduces a rigorous formalization for the additive tree, an empirically validated learning technique for creating a single decision tree, and shows that this method can produce models equivalent to CART or gradient boosted stumps at the extremes by varying a single parameter. Although the additive tree is designed primarily to provide both the model interpretability and predictive performance needed for high-stakes applications like medicine, it also can produce decision trees represented by hybrid models between CART and boosted stumps that can outperform either of these approaches.
机译:将机器学习扩展到医学,金融和刑事司法等高风险应用领域,在这些领域做出明智的决策需要对模型有清晰的了解,这增加了人们对可解释机器学习的兴趣。由于对预测的简单直观的解释,广泛使用的分类树和回归树(CART)在健康科学中发挥了重要作用。诸如梯度增强之类的组合方法可以提高决策树的准确性,但会以所生成模型的可解释性为代价。很大程度上是单独研究了添加模型(例如通过梯度增强产生的模型)和完整交互模型(例如CART)。我们证明了这些模型沿频谱存在,揭示了这些方法之间以前看不见的联系。本文介绍了加法树的严格形式化,这是一种经过经验验证的用于创建单个决策树的学习技术,并表明该方法可以通过更改单个参数来生成等效于CART或梯度增强树桩的模型。尽管添加树的设计主要是为了提供诸如医学等高风险应用所需的模型可解释性和预测性能,但它也可以生成由CART和增强树桩之间的混合模型表示的决策树,其性能可能优于这两种方法。

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