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Feature selection using hybrid Taguchi genetic algorithm and Fuzzy Support Vector Machine

机译:混合Taguchi遗传算法和模糊支持向量机的特征选择。

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The noises or the outliers in data points and the irrelevent or redundant features often reduce classification accuracy. This paper presents a novel approach of hybridizing two conventional machine learning algorithms for feature selection. Taguchi genetic algorithm (TGA) and Fuzzy Support Vector Machine (FSVM) with a new fuzzy membership function were combined in this hybrid method. The Taguchi method is an experimental design method, which is inserted between the crossover and the mutation operations of a GA to enhance the genetic algorithm so that better potential offspring can be generated. The TGA searches for the best feature set using principles of evolutionary process, after which these optimal features are then passed to the FSVM to calculate classification accuracy. Experimental results show that the presented approach is able to produce good performance on reducing the effects of the outliers and the noises and significantly improves the classification accuracy.
机译:数据点中的噪声或离群值以及不相关或多余的特征通常会降低分类的准确性。本文提出了一种将两种传统机器学习算法进行混合以进行特征选择的新颖方法。该混合方法将田口遗传算法(TGA)和具有新的模糊隶属度函数的模糊支持向量机(FSVM)相结合。 Taguchi方法是一种实验设计方法,它被插入GA的交叉和突变操作之间以增强遗传算法,从而可以产生更好的潜在后代。 TGA使用进化过程原理搜索最佳特征集,然后将这些最佳特征传递给FSVM以计算分类准确性。实验结果表明,该方法在减少离群值和噪声的影响上能够产生良好的性能,并显着提高了分类精度。

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