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Weighted Online Sequential Extreme Learning Machine for Class Imbalance Learning

机译:加权在线顺序极限学习机,用于班级失衡学习

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摘要

Most of the existing sequential learning methods for class imbalance learn data in chunks. In this paper, we propose a weighted online sequential extreme learning machine (WOS-ELM) algorithm for class imbalance learning (CIL). WOS-ELM is a general online learning method that alleviates the class imbalance problem in both chunk-by-chunk and one-by-one learning. One of the new features of WOS-ELM is that an appropriate weight setting for CIL is selected in a computationally efficient manner. In one-by-one learning of WOS-ELM, a new sample can update the classification model without waiting for a chunk to be completed. Extensive empirical evaluations on 15 imbalanced datasets show that WOS-ELM obtains comparable or better classification performance than competing methods. The computational time of WOS-ELM is also found to be lower than that of the competing CIL methods.
机译:现有的大多数用于班级不平衡的顺序学习方法都是分块学习数据。在本文中,我们提出了一种用于类不平衡学习(CIL)的加权在线顺序极限学习机(WOS-ELM)算法。 WOS-ELM是一种通用的在线学习方法,可以缓解逐块学习和一对一学习中的班级失衡问题。 WOS-ELM的新功能之一是,以计算有效的方式为CIL选择合适的权重设置。在WOS-ELM的一对一学习中,新样本可以更新分类模型,而无需等待块完成。对15个不平衡数据集的广泛经验评估表明,与竞争方法相比,WOS-ELM获得了可比或更好的分类性能。还发现WOS-ELM的计算时间比竞争的CIL方法要短。

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