FastXML:一个快速,准确和稳定的树分类器,用于极端的多标签学习

Yashoteja Prabhu, M. Varma
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引用次数: 374

摘要

极端多标签分类的目标是学习一种分类器,它可以从一个大的标签集中自动地用最相关的标签子集标记数据点。极端多标签分类是一个重要的研究问题,因为它不仅能够处理具有许多标签的应用程序,而且还允许重新表述排名问题,具有比现有表述更大的优势。在本文中,我们的目标是开发一种极端多标签分类器,它比最先进的多标签随机森林(MLRF)算法[2]和亚线性排序(LPSR)算法[35]更快地训练和更准确地预测。MLRF和LPSR学习层次结构来处理大量的标签,但优化任务独立的度量,如基尼指数或聚类误差,以学习层次结构。我们提出的FastXML算法通过直接优化基于nDCG的排序损失函数来实现更高的精度。我们还开发了一种交替最小化算法,以有效地优化所提出的公式。实验表明,FastXML可以在标准桌面上使用单核和多核分别在8小时和1小时内训练处理超过100万个标签的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FastXML: a fast, accurate and stable tree-classifier for extreme multi-label learning
The objective in extreme multi-label classification is to learn a classifier that can automatically tag a data point with the most relevant subset of labels from a large label set. Extreme multi-label classification is an important research problem since not only does it enable the tackling of applications with many labels but it also allows the reformulation of ranking problems with certain advantages over existing formulations. Our objective, in this paper, is to develop an extreme multi-label classifier that is faster to train and more accurate at prediction than the state-of-the-art Multi-label Random Forest (MLRF) algorithm [2] and the Label Partitioning for Sub-linear Ranking (LPSR) algorithm [35]. MLRF and LPSR learn a hierarchy to deal with the large number of labels but optimize task independent measures, such as the Gini index or clustering error, in order to learn the hierarchy. Our proposed FastXML algorithm achieves significantly higher accuracies by directly optimizing an nDCG based ranking loss function. We also develop an alternating minimization algorithm for efficiently optimizing the proposed formulation. Experiments reveal that FastXML can be trained on problems with more than a million labels on a standard desktop in eight hours using a single core and in an hour using multiple cores.
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