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A Novel Method for Highly Imbalanced Classification with Weighted Support Vector Machine

机译:一种新的加权支持向量机的高度不平衡分类方法

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In real life, the problem of imbalanced data classification is unavoidable and difficult to solve. Traditional SVMs based classification algorithms usually cannot classify highly imbalanced data accurately, and sampling strategies are widely used to help settle the matter. In this paper, we put forward a novel undersampling method i.e., granular weighted SVMs-repetitive under-sampling (GWSVM-RU) for highly imbalanced classification, which is a weighted SVMs version of the granular SVMs-repetitive undersampling (GSVM-RU) once proposed by Yuchun Tang et al. We complete the undersampling operation by extracting the negative information granules repetitively which are obtained through the naive SVMs algorithm, and then combine the negative and positive granules again to compose the new training data sets. Thus we rebalance the original imbalanced data sets and then build new models by weighted SVMs to predict the testing data set. Besides, we explore four other rebalance heuristic mechanisms including cost-sensitive learning, undersampling, oversampling and GSVM-RU, our approach holds the higher classification performance defined by new evaluation metrics including G-Mean, F-Measure and AUC-ROC. Theories and experiments reveal that our approach outperforms other methods.
机译:在现实生活中,数据分类不平衡的问题是不可避免的且难以解决的问题。基于传统的SVMS的分类算法通常不能准确地分类高度不平衡数据,并广泛用于帮助解决此事的采样策略。在本文中,我们提出了一种新颖的强度采样方法,即,用于高度不平衡分类的粒度加权SVMS-Repetive und-采样(GWSVM-Ru),其是粒度SVMS重复欠采样(GSVM-RU)的加权SVMS版本yuchun tang等人提出。通过重复提取通过NAIVE SVMS算法获得的负信息颗粒来完成欠采样操作,然后再次组合负片和正颗粒以构成新的训练数据集。因此,我们重新平衡原始的不平衡数据集,然后通过加权SVM构建新模型以预测测试数据集。此外,我们探索了四种其他重新平衡启发式机制,包括成本敏感的学习,欠采样,过采样和GSVM-RU,我们的方法持有新的评估指标定义的较高分类性能,包括G-Mean,F测量和AUC-ROC。理论和实验表明,我们的方法优于其他方法。

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