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A Random Forest approach using imprecise probabilities

机译:使用不精确概率的随机森林方法

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The Random Forest classifier has been considered as an important reference in the data mining area. The building procedure of its base classifier (a decision tree) is principally based on a randomization process of data and features; and on a split criterion, which uses classic precise probabilities, to quantify the gain of information. One drawback found on this classifier is that it has a bad performance when it is applied on data sets with class noise. Very recently, it is proved that a new criterion which uses imprecise probabilities and general uncertainty measures, can improve the performance of the classic split criteria. In this work, the base classifier of the Random Forest is modified using that new criterion, producing also a new single decision tree model. This model join with the randomization process of features is the base classifier of a new procedure similar to the Random Forest, called Credal Random Forest. The principal differences between those two models are presented. In an experimental study, it is shown that the new method represents an improvement of the Random Forest when both are applied on data sets without class noise. But this improvement is notably greater when they are applied on data sets with class noise. (C) 2017 Elsevier B.V. All rights reserved.
机译:随机森林分类器已被视为数据挖掘领域的重要参考。基本分类器(决策树)的构建过程主要基于数据和特征的随机化过程;并使用经典精确概率的分裂标准来量化信息的获取。该分类器的一个缺点是,当将其应用于具有类别噪声的数据集时,其性能会很差。最近,事实证明,使用不精确概率和一般不确定性度量的新准则可以提高经典分裂准则的性能。在这项工作中,使用该新准则修改了随机森林的基本分类器,同时还产生了新的单决策树模型。这种与特征的随机化过程相结合的模型是类似于随机森林的新程序(称为Credal随机森林)的基础分类器。介绍了这两种模型之间的主要区别。在一项实验研究中,表明当两种方法都应用于没有类别噪声的数据集时,新方法代表了随机森林的一种改进。但是,当将它们应用于具有类噪声的数据集时,此改进显着更大。 (C)2017 Elsevier B.V.保留所有权利。

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