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Feature redundancy term variation for mutual information-based feature selection

机译:特征冗余术语变体进行相互信息的特征选择

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摘要

Feature selection plays a critical role in many applications that are relevant to machine learning, image processing and gene expression analysis. Traditional feature selection methods intend to maximize feature dependency while minimizing feature redundancy. In previous information-theoretical-based feature selection methods, feature redundancy term is measured by the mutual information between a candidate feature and each already-selected feature or the interaction information among a candidate feature, each already-selected feature and the class. However, the larger values of the traditional feature redundancy term do not indicate the worse a candidate feature because a candidate feature can obtain large redundant information, meanwhile offering large new classification information. To address this issue, we design a new feature redundancy term that considers the relevancy between a candidate feature and the class given each already-selected feature, and a novel feature selection method named min-redundancy and max-dependency (MRMD) is proposed. To verify the effectiveness of our method, MRMD is compared to eight competitive methods on an artificial example and fifteen real-world data sets respectively. The experimental results show that our method achieves the best classification performance with respect to multiple evaluation criteria.
机译:特征选择在与机器学习,图像处理和基因表达分析相关的许多应用中扮演关键作用。传统的特征选择方法打算最大限度地提高特征依赖性,同时最大限度地减少功能冗余。在以前的基于信息理论的特征选择方法中,特征冗余术语由候选特征和每个已经选择的特征之间的互动信息或候选特征之间的交互信息,每个已经选择的特征和类别来测量。然而,传统特征冗余术语的较大值并不表示候选特征更差,因为候选特征可以获得大的冗余信息,同时提供大的新分类信息。要解决此问题,我们设计了一个新的功能冗余术语,它考虑了候选功能与给定每个已选择的功能的类之间的相关性,并且提出了名为Min-Redundancy和Max-依赖(MRMD)的新颖特征选择方法。为了验证我们方法的有效性,MRMD分别与人工示例和十五个现实世界数据集的八种竞争方法进行比较。实验结果表明,我们的方法达到了多种评估标准的最佳分类性能。

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