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Multi-label core vector machine with a zero label

机译:零标签的多标签核心向量机

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摘要

Multi-label core vector machine (Rank-CVM) is an efficient and effective algorithm for multi-label classification. But there still exist two aspects to be improved: reducing training and testing computational costs further, and detecting relevant labels effectively. In this paper, we extend Rank-CVM via adding a zero label to construct its variant with a zero label, i.e., Rank-CVMz, which is formulated as the same quadratic programming form with a unit simplex constraint and non-negative ones as Rank-CVM, and then is solved by Frank-Wolfe method efficiently. Attractively, our Rank-CVMz has fewer variables to be solved than Rank-CVM, which speeds up training procedure dramatically. Further, the relevant labels are effectively detected by the zero label. Experimental results on 12 benchmark data sets demonstrate that our method achieves a competitive performance, compared with six existing multi-label algorithms according to six indicative instance-based measures. Moreover, on the average, our Rank-CVMz runs 83 times faster and has slightly fewer support vectors than its origin Rank-CVM.
机译:多标签核心向量机(Rank-CVM)是一种高效的多标签分类算法。但是仍然存在两个方面需要改进:进一步减少训练和测试计算成本,以及有效地检测相关标签。在本文中,我们通过添加零标签来扩展Rank-CVM,以构造带有零标签的变量,即Rank-CVMz,它被公式化为与二次单纯形约束相同的二次编程形式,而非负则与Rank -CVM,然后通过Frank-Wolfe方法有效解决。有吸引力的是,与Rank-CVM相比,我们的Rank-CVMz需要解决的变量更少,从而大大加快了训练过程。此外,相关标签被零标签有效地检测到。在12个基准数据集上的实验结果表明,与根据6种基于实例的指示性指标的6种现有多标签算法相比,我们的方法具有竞争优势。此外,平均而言,我们的Rank-CVMz运行速度比其原始Rank-CVM快83倍,支持向量略少。

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