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Generalized class-specific kernelized extreme learning machine for multiclass imbalanced learning

机译:通用的针对特定类别的带核极限学习机,用于多类不平衡学习

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Class imbalanced learning is a well-known issue, which exists in real-world applications. Datasets that have skewed class distribution raise hindrance to the traditional learning algorithms. Traditional classifiers give the same importance to all the samples, which leads to the prediction biased towards the majority classes. To solve this intrinsic deficiency, numerous strategies have been proposed such as weighted extreme learning machine (WELM), weighted support vector machine (WSVM), class-specific extreme learning machine (CS-ELM) and class-specific kernelized extreme learning machine (CSKELM). This work focuses on multiclass imbalance problems, which are more difficult compared to the binary class imbalance problems. Kernelized extreme learning machine (KELM) yields better results compared to the traditional extreme learning machine (ELM), which uses random input parameters. This work presents a generalized CSKELM (GCSKELM), the extension of our recently proposed CSKELM, which addresses the multiclass imbalanced problems more effectively. The proposed GCSKELM can be applied directly to solve the multiclass imbalanced problems. GCSKELM with Gaussian kernel function avoids the non-optimal hidden node problem associated with CS-ELM and other existing variants of ELM. The proposed work also has less computational cost in contrast with kernelized WELM (KWELM) for multiclass imbalanced learning. This work employs class-specific regularization parameters, which are determined by employing class proportion. The extensive experimental analysis shows that the proposed work obtains promising generalization performance in contrast with the other state-of-the-art imbalanced learning methods. (C) 2018 Elsevier Ltd. All rights reserved.
机译:班级不平衡学习是一个众所周知的问题,存在于现实世界的应用程序中。类别分布偏斜的数据集对传统的学习算法造成了障碍。传统的分类器对所有样本都具有相同的重要性,这导致预测偏向多数类别。为了解决这种内在缺陷,已经提出了许多策略,例如加权极限学习机(WELM),加权支持向量机(WSVM),特定类的极限学习机(CS-ELM)和特定类的内核化极限学习机(CSKELM)。 )。这项工作着重于多类不平衡问题,与二元类不平衡问题相比,这更加困难。与使用随机输入参数的传统极限学习机(ELM)相比,内核极限学习机(KELM)产生更好的结果。这项工作提出了广义CSKELM(GCSKELM),它是我们最近提出的CSKELM的扩展,可以更有效地解决多类不平衡问题。提出的GCSKELM可以直接用于解决多类不平衡问题。具有高斯内核功能的GCSKELM避免了与CS-ELM和其他现有ELM变体相关的非最佳隐藏节点问题。与用于多类不平衡学习的内核化WELM(KWELM)相比,拟议的工作还具有较少的计算成本。这项工作采用特定于类的正则化参数,这些参数是通过采用类比例来确定的。广泛的实验分析表明,与其他最新的不平衡学习方法相比,拟议的工作获得了有希望的泛化性能。 (C)2018 Elsevier Ltd.保留所有权利。

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