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A Label Correlation Based Weighting Feature Selection Approach for Multi-label Data

机译:基于标签相关性的多标签数据加权特征选择方法

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Exploiting label correlation is important for multi-label learning, where each instance is associated with a set of labels. However, most of existing multi-label feature selection methods ignore the label correlation. Therefore, we propose a Label Correlation Based Weighting Feature Selection Approach for Multi-Label Data, called MLLCWFS. It is a framework developed from traditional filtering feature selection methods for single-label data. To exploit the label correlation, we compute the importance of each label in mutual information, and adopt three weighting strategies to evaluate the correlation between features and labels. Extensive experiments conducted on four benchmark data sets using two base classifiers demonstrate that our approach is superior to the state-of-the-art feature selection algorithms for multi-label data.
机译:利用标签相关性对于多标签学习非常重要,因为每个实例都与一组标签相关联。但是,大多数现有的多标签特征选择方法都忽略了标签相关性。因此,我们提出了一种用于多标签数据的基于标签相关性的加权特征选择方法,称为MLLCWFS。它是从传统的单标签数据过滤功能选择方法开发的框架。为了利用标签相关性,我们计算每个标签在互信中的重要性,并采用三种加权策略来评估特征和标签之间的相关性。使用两个基本分类器对四个基准数据集进行的广泛实验表明,我们的方法优于多标签数据的最新特征选择算法。

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