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Application of Self-adapting Genetic Algorithms to Generate Fuzzy Systems for a Regression Problem

机译:自适应遗传算法在回归问题模糊系统生成中的应用

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Six variants of self-adapting genetic algorithms with varying mutation, crossover, and selection were developed. To implement self-adaptation the main part of a chromosome which comprised the solution was extended to include mutation rates, crossover rates, and/or tournament size. The solution part comprised the representation of a fuzzy system and was real-coded whereas to implement the proposed self-adapting mechanisms binary coding was employed. The resulting self-adaptive genetic fuzzy systems were evaluated using real-world datasets derived from a cadastral system and included records referring to residential premises transactions. They were also compared in respect of prediction accuracy with genetic fuzzy systems optimized by a classical genetic algorithm, multilayer perceptron and radial basis function neural network. The analysis of the results was performed using statistical methodology including nonparametric tests followed by post-hoc procedures designed especially for multiple N×N comparisons.
机译:开发了具有变化的变异,交叉和选择的自适应遗传算法的六个变体。为了实现自适应,构成解决方案的染色体的主要部分被扩展为包括突变率,交叉率和/或竞争大小。解决方案部分包括一个模糊系统的表示,并进行了实编码,而为实现所提出的自适应机制,采用了二进制编码。使用来自地籍系统的真实数据集对所得的自适应遗传模糊系统进行了评估,其中包括涉及居民处所交易的记录。他们还在预测精度方面与通过经典遗传算法,多层感知器和径向基函数神经网络优化的遗传模糊系统进行了比较。结果的分析是使用统计方法进行的,包括非参数测试,然后是专门为多个N×N比较而设计的事后程序。

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