Ensemble of decision trees with global constraints for ordinal classification

R. Sousa, Jaime S. Cardoso
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引用次数: 9

Abstract

While ordinal classification problems are common in many situations, induction of ordinal decision trees has not evolved significantly. Conventional trees for regression settings or nominal classification are commonly induced for ordinal classification problems. On the other hand a decision tree consistent with the ordinal setting is often desirable to aid decision making in such situations as credit rating. In this work we extend a recently proposed strategy based on constraints defined globally over the feature space. We propose a bootstrap technique to improve the accuracy of the baseline solution. Experiments in synthetic and real data show the benefits of our proposal.
有序分类的全局约束决策树集成
虽然序数分类问题在许多情况下都很常见,但序数决策树的归纳并没有得到显著的发展。用于回归设置或名义分类的常规树通常用于序数分类问题。另一方面,在信用评级等情况下,通常需要与序数设置一致的决策树来辅助决策。在这项工作中,我们扩展了最近提出的基于全局特征空间上定义的约束的策略。我们提出了一种自举技术来提高基线解的精度。合成数据和实际数据的实验表明了我们的建议的好处。
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