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Online Boosting Algorithms for Multi-label Ranking

机译:用于多标签排名的在线Boosting算法

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We consider the multi-label ranking approach to multi-label learning. Boosting is a natural method for multi-label ranking as it aggregates weak predictions through majority votes, which can be directly used as scores to produce a ranking of the labels. We design online boosting algorithms with provable loss bounds for multi-label ranking. We show that our first algorithm is optimal in terms of the number of learners required to attain a desired accuracy, but it requires knowledge of the edge of the weak learners. We also design an adaptive algorithm that does not require this knowledge and is hence more practical. Experimental results on real data sets demonstrate that our algorithms are at least as good as existing batch boosting algorithms.
机译:我们考虑采用多标签排名方法进行多标签学习。提升是多标签排名的一种自然方法,因为它通过多数票汇总了弱预测,可以直接用作得分以产生标签排名。我们设计具有可证明损失界限的在线增强算法,以进行多标签排名。我们表明,就获得所需精度所需的学习者数量而言,我们的第一种算法是最佳的,但它需要了解弱学习者的优势。我们还设计了一种不需要该知识的自适应算法,因此更加实用。在真实数据集上的实验结果表明,我们的算法至少与现有的批量增强算法一样好。

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