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Efficient Multi-Label Feature Selection Using Entropy-Based Label Selection

机译:使用基于熵的标签选择进行高效的多标签特征选择

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Multi-label feature selection is designed to select a subset of features according to their importance to multiple labels. This task can be achieved by ranking the dependencies of features and selecting the features with the highest rankings. In a multi-label feature selection problem, the algorithm may be faced with a dataset containing a large number of labels. Because the computational cost of multi-label feature selection increases according to the number of labels, the algorithm may suffer from a degradation in performance when processing very large datasets. In this study, we propose an efficient multi-label feature selection method based on an information-theoretic label selection strategy. By identifying a subset of labels that significantly influence the importance of features, the proposed method efficiently outputs a feature subset. Experimental results demonstrate that the proposed method can identify a feature subset much faster than conventional multi-label feature selection methods for large multi-label datasets.
机译:多标签特征选择旨在根据特征对多个标签的重要性来选择特征子集。可以通过对要素的依存关系进行排名并选择排名最高的要素来实现此任务。在多标签特征选择问题中,该算法可能面临包含大量标签的数据集。因为多标签特征选择的计算成本根据标签的数量而增加,所以当处理非常大的数据集时,该算法可能会遭受性能下降的困扰。在这项研究中,我们提出了一种基于信息理论标签选择策略的有效多标签特征选择方法。通过识别显着影响特征重要性的标签子集,所提出的方法有效地输出了特征子集。实验结果表明,对于大型的多标签数据集,该方法可以比传统的多标签特征选择方法更快地识别特征子集。

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