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Automatic Induction of Piecewise Linear Models with Decision Trees

机译:具有决策树的分段线性模型的自动归纳

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摘要

The expressive capacity of a CART decision tree is extended by associating a linear predictor to each of the terminal nodes of the tree. The prediction is made by means of a piecewise linear model (PLM), which is more flexible than the usual piecewise constant models produced by standard regression trees. The complexity of the linear predictors at the leaves is limited by using a stepwise regression procedure, which ensures that only statistically relevant attributes are included in the regression. The accuracy and robustness of the PLM regression trees are demonstrated in a series of examples, including problems with noisy data and/or irrelevant attributes.
机译:通过将线性预测变量与树的每个终端节点相关联,可以扩展CART决策树的表达能力。该预测是通过分段线性模型(PLM)进行的,该模型比标准回归树生成的常规分段常数模型更灵活。叶子上的线性预测变量的复杂性通过使用逐步回归程序来限制,这确保了回归中仅包括统计上相关的属性。 PLM回归树的准确性和鲁棒性在一系列示例中得到了证明,包括噪声数据和/或不相关属性的问题。

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