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Managing Monotonicity in Classification by a Pruned Random Forest

机译:由修剪的随机森林进行分类中的单调性

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In ordinal monotonic classification problems, the class variable should increase according to a subset of explanatory variables. Standard classifiers do not guarantee to produce model that satisfy the monotonicity constraints. Some algorithms have been developed to manage this issue, such as decision trees which have modified the growing and pruning mechanisms. In this contribution we study the suitability of using these mechanisms in the generation of Random Forests. We introduce a simple ensemble pruning mechanism based on the degree of monotonicity. After an exhaustive experimental analysis, we deduce that a Random Forest applied over these problems is able to achieve a slightly better predictive performance than standard algorithms.
机译:在序数单调分类问题中,类变量应根据解释变量的子集增加。标准分类器不保证生产满足单调性限制的模型。已经开发了一些算法来管理这个问题,例如修改了越来越多和修剪机制的决策树。在这一贡献中,我们研究了在随机森林产生中使用这些机制的适用性。我们介绍了一个基于单调性程度的简单的集合修剪机制。经过详尽的实验分析,我们推导出在这些问题上应用的随机森林能够实现比标准算法稍好的预测性能。

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