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Multiclass Alternating Decision Trees

机译:多类交替决策树

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摘要

The alternating decision tree (ADTree) is a successful classification technique that combines decision trees with the predictive accuracy of boosting into a set of interpretable classification rules. The original formulation of the tree induction algorithm restricted attention to binary classification problems. This paper empirically evaluates several wrapper methods for extending the algorithm to the multiclass case by splitting the problem into several two-class problems. Seeking a more natural solution we then adapt the multiclass LogitBoost and AdaBoost.MH procedures to induce alternating decision trees directly. Experimental results confirm that these procedures are comparable with wrapper methods that are based on the original ADTree formulation in accuracy, while inducing much smaller trees.
机译:交替决策树(ADTree)是一种成功的分类技术,它将决策树与增强的预测准确性结合在一起,成为一组可解释的分类规则。树归纳算法的原始公式限制了对二进制分类问题的关注。本文通过将问题分解为几个两类问题,经验地评估了几种将方法扩展到多类情况的包装方法。为了寻求更自然的解决方案,我们随后改编了多类LogitBoost和AdaBoost.MH过程以直接生成交替的决策树。实验结果证实,这些程序与基于原始ADTree公式的包装器方法在准确性上具有可比性,同时可以诱导出更小的树木。

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