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Meta-cognitive online sequential extreme learning machine for imbalanced and concept-drifting data classification

机译:用于不平衡和概念漂移数据分类的元认知在线顺序极限学习机

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In this paper, a meta-cognitive online sequential extreme learning machine (MOS-ELM) is proposed for class imbalance and concept drift learning. In MOS-ELM, meta-cognition is used to self-regulate the learning by selecting suitable learning strategies for class imbalance and concept drift problems. MOS-ELM is the first sequential learning method to alleviate the imbalance problem for both binary class and multi-class data streams with concept drift. In MOS-ELM, a new adaptive window approach is proposed for concept drift learning. A single output update equation is also proposed which unifies various application specific OS-ELM methods. The performance of MOS-ELM is evaluated under different conditions and compared with methods each specific to some of the conditions. On most of the datasets in comparison, MOS-ELM outperforms the competing methods. (C) 2016 Elsevier Ltd. All rights reserved.
机译:本文提出了一种用于班级不平衡和概念漂移学习的元认知在线顺序极限学习机(MOS-ELM)。在MOS-ELM中,通过选择适合班级不平衡和概念漂移问题的学习策略,元认知可用于自我调节学习。 MOS-ELM是缓解因概念漂移而导致的二进制类和多类数据流不平衡问题的第一种顺序学习方法。在MOS-ELM中,提出了一种新的自适应窗口方法用于概念漂移学习。还提出了单个输出更新方程,该方程统一了各种特定于应用程序的OS-ELM方法。在不同条件下评估MOS-ELM的性能,并与每种条件下特定的方法进行比较。在大多数比较数据集中,MOS-ELM的表现优于竞争方法。 (C)2016 Elsevier Ltd.保留所有权利。

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