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Imprecise Extensions of Random Forests and Random Survival Forests

机译:随机森林和随机生存森林的不精确扩展

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Robust weighted aggregation schemes taking into account imprecision of the decision tree estimates in random forests and in random survival forests are proposed in the paper. The first scheme dealing with the random forest improves the classification problem solution. The second scheme dealing with the random survival forest improves the survival analysis task solution. The main idea underlying the proposed modifications is to introduce the tree weights which take simultaneously into account imprecision of estimations as well as aims of the classification and regression problems. The imprecision of the tree estimates is defined by means of imprecise statistical inference models and interval models. Special modifications of loss functions for the classification and regression tasks are proposed in order to simplify minimax and maximin optimization problems for computing optimal weights. Numerical examples illustrate the proposed robust models.
机译:本文提出了一种鲁棒的加权聚合方案,该方案考虑了随机森林和随机生存森林中决策树估计的不精确性。处理随机森林的第一种方案改进了分类问题的解决方案。处理随机生存森林的第二种方案改进了生存分析任务解决方案。提出的修改所基于的主要思想是引入树的权重,该权重同时考虑估计的不精确性以及分类和回归问题的目的。树估计的不精确性是通过不精确的统计推断模型和区间模型来定义的。提出了针对分类和回归任务的损失函数的特殊修改,以简化用于计算最佳权重的minimax和maximin优化问题。数值算例说明了所提出的鲁棒模型。

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