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首页> 外文期刊>IEICE transactions on information and systems >Recursive Nearest Neighbor Graph Partitioning for Extreme Multi-Label Learning
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Recursive Nearest Neighbor Graph Partitioning for Extreme Multi-Label Learning

机译:用于极端多标签学习的递归最近邻图分区

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摘要

As the data size of Web-related multi-label classification problems continues to increase, the label space has also grown extremely large. For example, the number of labels appearing in Web page tagging and E-commerce recommendation tasks reaches hundreds of thousands or even millions. In this paper, we propose a graph partitioning tree (GPT), which is a novel approach for extreme multi-label learning. At an internal node of the tree, the GPT learns a linear separator to partition a feature space, considering approximate k -nearest neighbor graph of the label vectors. We also developed a simple sequential optimization procedure for learning the linear binary classifiers. Extensive experiments on large-scale real-world data sets showed that our method achieves better prediction accuracy than state-of-the-art tree-based methods, while maintaining fast prediction.
机译:随着与Web相关的多标签分类问题的数据量不断增加,标签空间也变得非常大。例如,出现在网页标记和电子商务推荐任务中的标签数量达到数十万甚至数百万。在本文中,我们提出了一种图分区树(GPT),这是一种用于极端多标签学习的新颖方法。在树的内部节点,GPT学习线性分隔符以划分特征空间,同时考虑标签向量的近似k-最近邻图。我们还开发了用于学习线性二进制分类器的简单顺序优化程序。在大规模的真实世界数据集上进行的大量实验表明,与基于最新树的方法相比,我们的方法在保持快速预测的同时,具有更高的预测精度。

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