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Genetic Algorithm Optimized Feature Transformation -A Comparison with Different Classifiers

机译:遗传算法优化特征变换 - 与不同分类器的比较

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When using a Genetic Algorithm (GA) to optimize the feature space of pattern classification problems, the performance improvement is not only determined by the data set used, but also depends on the classifier. This work compares the improvements achieved by GA-optimized feature transformations on several simple classifiers. Some traditional feature transformation techniques, such as Principal Components Analysis (PCA) and Linear Discriminant Analysis (LDA) are also tested to see their effects on the GA optimization. The results based on some real-world data and five benchmark data sets from the UCI repository show that the improvements after GA-optimized feature transformation are in reverse ratio with the original classification rate if the classifier is used alone. It is also shown that performing the PCA and LDA transformations on the feature space prior to the GA optimization improved the final result.
机译:当使用遗传算法(GA)来优化模式分类问题的特征空间时,性能改进不仅由所使用的数据集确定,而且取决于分类器。这项工作比较了几种简单分类器上的GA优化的特征转换所达到的改进。还测试了一些传统的特征转化技术,例如主成分分析(PCA)和线性判别分析(LDA),以便看到它们对GA优化的影响。基于一些实际数据和来自UCI存储库的五个基准数据集的结果表明,如果单独使用分类器,则GA优化特性变换后的改进与原始分类率相反。还示出了在GA优化之前在特征空间上执行PCA和LDA变换改善了最终结果。

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