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A Preliminar Analysis of CO~2RBFN in Imbalanced Problems

机译:不平衡问题中CO〜2RBFN的初步分析

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摘要

In many real classification problems the data are imbalanced, i.e., the number of instances for some classes are much higher than that of the other classes. Solving a classification task using such an imbalanced data-set is difficult due to the bias of the training towards the majority classes. The aim of this contribution is to analyse the performance of CO~2RBFN, a cooperative-competitive evolutionary model for the design of RBFNs applied to classification problems on imbalanced domains and to study the cooperation of a well known preprocessing method, the "Synthetic Minority Over-sampling Technique" (SMOTE) with our algorithm. The good performance of CO~2RBFN is shown through an experimental study carried out over a large collection of imbalanced data-sets.
机译:在许多实际分类问题中,数据是不平衡的,即,某些类别的实例数量远高于其他类别的实例数量。由于训练偏向多数班级,使用这种不平衡的数据集解决分类任务很困难。该贡献的目的是分析CO〜2RBFN的性能,CO〜2RBFN是一种用于RBFN设计的合作竞争进化模型,适用于不平衡域的分类问题,并研究了一种著名的预处理方法“合成少数族裔采样技术”(SMOTE)。通过对大量不平衡数据集进行的实验研究,表明了CO〜2RBFN的良好性能。

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