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A preliminary study on mutation operators in cooperative competitive algorithms for RBFN design

机译:RBFN设计合作竞争算法中突变算子的初步研究

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Evolutionary Computation is a typical paradigm for the Radial Basis Function Network design. In this environment an individual represents a whole network. An alternative is to use cooperative-competitive methods where an individual is a part of the solution. CO2RBFN is an evolutionary cooperative-competitive hybrid methodology for the design of Radial Basis Function Networks. In the proposed cooperative-competitive environment, each individual represents a Radial Basis Function, and the entire population is responsible for the final solution. In order to calculate the application probability of the evolutive operators over a certain Radial Basis Function, a Fuzzy Rule Based System has been used. In this paper, CO2RBFN is adapted to the regression problem and an analysis of mutation operator is performed. To do so, two implementation of the mutation operator, based on gradient and based on clustering, have been implemented and tested. The results have been compared with other data mining and mathematical methods usually used in regression problems.
机译:进化计算是径向基函数网络设计的典型范例。在这种环境中,个人代表整个网络。另一种方法是使用个人是解决方案的一部分的合作竞争方法。 CO 2 RBFN是一种用于设计径向基函数网络的进化协作竞争性混合方法。在拟议的合作竞争环境中,每个人代表径向基函数,整个人口负责最终解决方案。为了在某​​个径向基函数上计算演进算子的应用概率,已经使用了基于模糊的基于规则的系统。在本文中,CO 2 RBFN适于回归问题,进行突变算子的分析。为此,已经实施和测试了基于梯度和基于聚类的突变操作员的两种实现。结果与通常用于回归问题的其他数据挖掘和数学方法进行了比较。

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