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Relevance and Redundancy Analysis for Ensemble Classifiers

机译:集成分类器的相关性和冗余分析

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In machine learning systems, especially in medical applications, clinical datasets usually contain high dimensional feature spaces with relatively few samples that lead to poor classifier performance. To overcome this problem, feature selection and ensemble classification are applied in order to improve accuracy and stability. This research presents an analysis of the effect of removing irrelevant and redundant features with ensemble classifiers using five datasets and compared with floating search method. Eliminating redundant features provides better accuracy and computational time than removing irrelevant features of the ensemble.
机译:在机器学习系统中,尤其是在医疗应用中,临床数据集通常包含高维特征空间,且样本数量相对较少,导致分类器性能不佳。为了克服这个问题,特征选择和整体分类被应用以提高准确性和稳定性。这项研究提出了使用集成分类器使用五个数据集来去除不相关和冗余特征的效果,并与浮动搜索方法进行了比较。与删除集成的无关功能相比,消除冗余功能可提供更好的准确性和计算时间。

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