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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Active k-labelsets ensemble for multi-label classification
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Active k-labelsets ensemble for multi-label classification

机译:用于多标签分类的活动k-labEsets集合

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摘要

The random k-labelsets ensemble (RAkEL) is a multi-label learning strategy that integrates many singlelabel learning models. Each single-label model is constructed using a label powerset (LP) technique based on a randomly generated size-k label subset. Although RAkEL can improve the generalization capability and reduce the complexity of the original LP method, the quality of the randomly generated label subsets could be low. On the one hand, the transformed classes may be difficult to separate in the feature space, negatively affecting the performance; on the other hand, the classes might be highly imbalanced, resulting in difficulties in using the existing single-label algorithms. To solve these problems, we propose an active k-labelsets ensemble (ACkEL) paradigm. Borrowing the idea of active learning, a label-selection criterion is proposed to evaluate the separability and balance level of the classes transformed from a label subset. Subsequently, by randomly selecting the first label or label subset, the remaining ones are iteratively chosen based on the proposed criterion. ACkEL can be realized in both the disjoint and overlapping modes, which adopt pool-based and stream-based frameworks, respectively. Experimental comparisons demonstrate the feasibility and effectiveness of the proposed methods. (C) 2020 Elsevier Ltd. All rights reserved.
机译:随机k-标签集集成(RAkEL)是一种多标签学习策略,集成了许多单标签学习模型。每个单标签模型都是使用基于随机生成的size-k标签子集的标签功率集(LP)技术构建的。虽然RAkEL可以提高原LP方法的泛化能力并降低其复杂性,但随机生成的标签子集的质量可能较低。一方面,转换后的类可能难以在特征空间中分离,对性能产生负面影响;另一方面,这些类可能是高度不平衡的,导致使用现有的单标签算法存在困难。为了解决这些问题,我们提出了一种主动k-标签集集成(ACkEL)范式。借鉴主动学习的思想,提出了一个标签选择准则,用于评估标签子集转换成的类的可分性和平衡水平。随后,通过随机选择第一个标签或标签子集,根据建议的标准迭代选择剩余的标签或标签子集。ACkEL可以在不相交和重叠模式下实现,分别采用基于池和基于流的框架。实验比较证明了所提方法的可行性和有效性。(C) 2020爱思唯尔有限公司版权所有。

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