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Customizing SVM as a base learner with AdaBoost ensemble to learn from multi-class problems: A hybrid approach AdaBoost-MSVM

机译:使用Adaboost集合自定义SVM作为基础学习者,从多级问题中学习:混合方法Adaboost-MSVM

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Learning from a multi-class problem has not been an easy task for most of the classifiers, because of multiple issues. In the complex multi-class scenarios, samples of different classes overlap with each other by sharing attribute, and hence the visibility of least represented samples decrease even more. Learning from imbalanced data studied extensively in the research community, however, the overlapping issues and the co-occurrence impact of overlapping with data imbalance have received comparatively less attention, even though their joint impact is more thoughtful on classifiers' performance. In this paper, we introduce a modified SVM, MSVM to use as a base classifier with the AdaBoost ensemble classifier (MSVM-AdB) to enhance the learning capability of the ensemble classifier. To implement the proposed technique, we divide the multi-class dataset into overlapping and non-overlapping region. The overlapping region is further filter into the Critical and less Critical region depending upon their sample contribution in the overlapped region. The MSVM is designed to map the overlapped samples in a higher dimension by modifying the kernel mapping function of the standard SVM by using the mean distance of the Critical region samples. To highlight the learning enhancement of the MSVM-AdB, we use 20 real datasets with varying imbalance ratio and the overlapping degree to compare the significance of the AdaBoost-MSVM with the standard SVM, and AdaBoost with standard base classifiers. Experimental results show the superiority of the MSVM-AdB on a collection of benchmark datasets to its standard counterpart classifiers. (C) 2021 Elsevier B.V. All rights reserved.
机译:从多级问题中学习对于大多数分类器而言,对于大多数分类而言,这不是一件容易的任务,因为多个问题。在复杂的多类场景中,不同类别的样本通过共享属性彼此重叠,因此最小代表样本的可见性更加减少。然而,在研究界广泛研究的数据中学习,然而,与数据不平衡重叠的重叠问题和与数据不平衡重叠的共发生影响相对较少,即使它们的关节影响更加深思熟虑对分类器的表现。在本文中,我们引入了一个修改的SVM,MSVM用作具有Adaboost集合分类器(MSVM-adb)的基本分类器,以增强集合分类器的学习能力。为了实现所提出的技术,我们将多级数据集划分为重叠和非重叠区域。根据其在重叠区域中的样本贡献,重叠区域进一步过滤到临界和更少的关键区域中。 MSVM旨在通过使用关键区域样本的平均距离来修改标准SVM的内核映射函数来映射更高尺寸的重叠样本。为了突出MSVM-adb的学习增强,我们使用具有不同不平衡率的20个真实数据集和重叠程度,以将Adaboost-MSVM与标准SVM的重要性与标准基础分类器的adaboost进行比较。实验结果显示了MSVM-ADB在其标准对应分类器的基准数据集集合上的优越性。 (c)2021 elestvier b.v.保留所有权利。

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