Ensemble online weighted sequential extreme learning machine for class imbalanced data streams

Liwen Wang, Yicheng Yan, Wei Guo
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引用次数: 1

Abstract

Class imbalanced data streams often have unbalanced sample distribution and a certain type of sample size is too small, which will lead to over fitting phenomenon due to insufficient sample learning, and most current classifiers have problems such as model instability. Therefore, choosing the online sequential extreme learning machine (OSELM) as the basic theoretical model, and combining the AdaBoost ensemble learning ideas and cost-sensitive strategies, an ensemble online weighted sequential extreme learning machine algorithm (ABC-OSELM) is proposed. Firstly, in order to solve the problem that the minority classes are easily misclassified due to class imbalance, the OSELM algorithm based on cost-sensitive learning (C-OSELM) is proposed, which improves the misclassification by assigning different penalty parameters to various samples, it can effectively alleviate the phenomenon of excessive deviation of the decision-making surface. On this basis, in order to further improve the classification accuracy and stability of the algorithm, combining C-OSELM with ensemble learning ideas, an ensemble C-OSELM algorithm based on AdaBoost (ABC-OSELM) is proposed. By adopting a homogeneous integration strategy, iteratively adjust the weight of the base classifier to generate a more stable strong classifier. Finally, the effectiveness and feasibility of the ABC-OSELM algorithm are verified through 15 class II imbalanced datasets.
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类不平衡数据流集成在线加权顺序极值学习机
类不平衡数据流往往样本分布不平衡,某一类的样本量过小,会由于样本学习不足而导致过拟合现象,目前大多数分类器都存在模型不稳定等问题。首先,为了解决少数类由于类不平衡而容易被错分类的问题,提出了基于代价敏感学习的OSELM算法(C-OSELM),该算法通过对不同样本分配不同的惩罚参数来改善错分类,有效缓解决策面偏差过大的现象。采用同质集成策略,迭代调整基分类器的权值,生成更稳定的强分类器。最后,通过15个二类不平衡数据集验证了ABC-OSELM算法的有效性和可行性。
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