首次分析了局部和全局优化权值法在非平衡环境下RBFN协同-竞争设计中的作用

M. D. Pérez-Godoy, A. J. Rivera, M. J. Jesús, F. Martínez
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引用次数: 0

摘要

许多实际应用程序由数据集组成,其中类的分布有很大不同。这些数据集通常被称为不平衡数据集。提出的解决这一问题的方法可以分为两类:基于数据的方法,在预处理阶段对问题数据进行采样;基于算法的方法,修改或创建新的方法来解决不平衡问题。在本文中,CO2 RBFN是一种合作-竞争设计方法,用于径向基函数网络,以前已经证明了处理不平衡数据集的良好行为,使用两种不同的训练权重算法进行测试,局部和全局,以获得有关该问题的知识。作为结论,我们可以勾勒出一个更全局优化的训练算法得到更差的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A first analysis of the effect of local and global optimization weights methods in the cooperative-competitive design of RBFN for imbalanced environments
Many real applications are composed of data sets where the distribution of the classes is significantly different. These data sets are commonly known as imbalanced data sets. Proposed approaches that address this problem can be categorized into two types: data-based, which resample problem data in a preprocessing phase and algorithm-based which modify or create new methods to address the imbalance problem. In this paper, CO2 RBFN a cooperative-competitive design method for Radial Basis Function Networks that has previously demonstrated a good behaviour tackling imbalanced data sets, is tested using two different training weights algorithms, local and global, in order to gain knowledge about this problem. As conclusions we can outline that a more global optimizer training algorithm obtains worse results.
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