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CO~2RBFN-CS: First Approach Introducing Cost-Sensitivity in the Cooperative-Competitive RBFN Design

机译:CO〜2RBFN-CS:在合作竞争的RBFN设计中引入成本敏感性的第一种方法

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The interest in dealing with imbalanced datasets has grown in the last years, since they represent many real world scenarios. Different methods that address imbalance problems can be classified into three categories: data sampling, algorithmic modification and cost-sensitive learning. The fundamentals of the last methodology is to assign higher costs to wrong classification classes with the aim of reducing higher cost errors. In this paper, CO~2RBFN-CS, a cooperative-competitive Radial Basis Function Network algorithm that implements cost-sensitivity is presented. Specifically, a cost parameter is introduced in the training stage of the algorithm. This parameter modifies the learning rate of the weights taking into account the right (or wrong) classification of the instance, the type of class (majority or minority) and the imbalance ratio of the data set.
机译:由于不平衡数据集代表了许多现实世界的场景,因此近年来对这种不平衡数据集的兴趣不断增长。解决不平衡问题的不同方法可以分为三类:数据采样,算法修改和成本敏感型学习。最后一种方法的基本原理是将较高的成本分配给错误的分​​类类别,以减少较高的成本错误。本文提出了一种实现成本敏感性的协作竞争径向基函数网络算法CO〜2RBFN-CS。具体而言,在算法的训练阶段引入了成本参数。考虑到实例的正确(或错误)分类,类的类型(多数或少数)和数据集的不平衡比率,此参数修改权重的学习率。

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