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Designing classifier fusion systems by genetic algorithms

机译:用遗传算法设计分类器融合系统

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摘要

We suggest two simple ways to use a genetic algorithm (GA) to design a multiple-classifier system. The first GA version selects disjoint feature subsets to be used by the individual classifiers, whereas the second version selects (possibly) overlapping feature subsets, and also the types of the individual classifiers. The two GAs have been tested with four real data sets: heart, Satimage, letters, and forensic glasses. We used three-classifier systems and basic types of individual classifiers (the linear and quadratic discriminant classifiers and the logistic classifier). The multiple-classifier systems designed with the two GAs were compared against classifiers using: all features; the best feature subset found by the sequential backward selection method; and the best feature subset found by a CA. The GA design can be made less prone to overtraining by including penalty terms in the fitness function accounting for the number of features used.
机译:我们建议使用遗传算法(GA)设计多分类器系统的两种简单方法。第一个GA版本选择各个分类器要使用的不相交特征子集,而第二个版本选择(可能)重叠的特征子集,以及各个分类器的类型。这两个GA已通过四个真实数据集进行了测试:心脏,Satimage,字母和法医眼镜。我们使用了三个分类器系统和单个分类器的基本类型(线性和二次判别式分类器和逻辑分类器)。将使用两个GA设计的多分类器系统与使用以下各项的分类器进行比较:所有功能;通过顺序向后选择方法找到的最佳特征子集;以及CA找到的最佳功能子集。通过在适应度函数中包括考虑使用的特征数量的惩罚项,可以使GA设计不易过度训练。

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