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An effective Weighted Multi-class Least Squares Twin Support Vector Machine for Imbalanced data classification

机译:用于不平衡数据分类的有效加权多类最小二乘双支持向量机

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摘要

The performance of machine learning algorithms is affected by the imbalanced distribution of data among classes. This issue is crucial in various practical problem domains, for example, in medical diagnosis, network intrusion, fraud detection etc. Most efforts so far are mainly focused upon binary class imbalance problem. However, the class imbalance problem is also reported in multi-class scenario. The solutions proposed by the researchers for two-class scenario are not applicable to multi-class domains. So, in this paper, we have developed an effective Weighted Multi-class Least Squares Twin Support Vector Machine (WMLSTSVM) approach to address the problem of imbalanced data classification for multi class. This research work employs appropriate weight setting in loss function, e.g. it adjusts the cost of error for imbalanced data in order to control the sensitivity of the classifier. In order to prove the validity of the proposed approach, the experiment has been performed on fifteen benchmark datasets. The performance of proposed WMLSTSVM is analyzed and compared with some other SVMs and TWSVMs and it is observed that our proposed approach outperforms all of them. The proposed approach is statistically analyzed by using non-parametric Wilcoxon signed rank and Friedman tests.
机译:机器学习算法的性能受类之间数据分配不平衡的影响。这个问题在各种实际问题领域中都是至关重要的,例如在医疗诊断,网络入侵,欺诈检测等方面。迄今为止,大多数工作主要集中在二元类不平衡问题上。但是,在多类方案中也报告了类不平衡问题。研究人员针对两类场景提出的解决方案不适用于多类领域。因此,在本文中,我们开发了一种有效的加权多类最小二乘双支持向量机(WMLSTSVM)方法来解决多类数据分类不平衡的问题。这项研究工作在损失函数中采用了适当的权重设置,例如它调整不平衡数据的错误成本,以控制分类器的敏感性。为了证明该方法的有效性,已经在15个基准数据集上进行了实验。通过分析所提出的WMLSTSVM的性能,并将其与其他一些SVM和TWSVM进行比较,可以发现我们提出的方法优于所有方法。通过使用非参数Wilcoxon有符号秩和Friedman检验对提出的方法进行统计分析。

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