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Multi-Label Learning Based on Label Entropy Guided Clustering

机译:基于标签熵引导聚类的多标签学习

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Recently multi-label learning has attracted the attention of a lot of researchers in machine learning field. Many algorithms have been proposed. The main stream of multi-label learning is the research on how to boost predicting performance using label correlations. However, these methods ignore the importance of feature vectors. Recent study explores to use feature vectors and label vectors collaboratively. This paper proposes a simple but effective algorithm ML-LEC (Multi-label Learning based on Label Entropy guided Clustering). It first performs clustering with the number of clusters set by label entropy adaptively for each label. New features are constructed from the original feature vectors by querying the clustering result. Then, models are obtained by using ordinary classification algorithm. Experiments on several data sets from different application domains verify the superiority of the proposed algorithm to some baseline and the state-of-art ones.
机译:近年来,多标签学习吸引了机器学习领域中许多研究人员的关注。已经提出了许多算法。多标签学习的主流是关于如何使用标签相关性提高预测性能的研究。但是,这些方法忽略了特征向量的重要性。最近的研究探索了协同使用特征向量和标记向量。本文提出了一种简单而有效的算法ML-LEC(基于标签熵引导聚类的多标签学习)。它首先对每个标签自适应地执行由标签熵设置的聚类数量的聚类。通过查询聚类结果,从原始特征向量构造新特征。然后,使用普通分类算法获得模型。对来自不同应用领域的多个数据集进行的实验证明了该算法相对于某些基线和最新技术的优越性。

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