Class imbalance is a frequently occurring scenario in classification tasks. Learning from imbalanced data poses a major challenge, which has instigated a lot of research in this area. Data preprocessing using sampling techniques is a standard approach to deal with the imbalance present in the data. Since standard classification algorithms do not perform well on imbalanced data, the dataset needs to be adequately balanced before training. This can be accomplished by oversampling the minority class or undersampling the majority class. In this study, a novel hybrid sampling algorithm has been proposed. To overcome the limitations of the sampling techniques while ensuring the quality of the retained sampled dataset, a sophisticated framework has been developed to properly combine three different sampling techniques. Neighborhood Cleaning rule is first applied to reduce the imbalance. Random undersampling is then strategically coupled with the SMOTE algorithm to obtain an optimal balance in the dataset. This proposed hybrid methodology, termed "SMOTE-RUS-NC", has been compared with other state-of-the-art sampling techniques. The strategy is further incorporated into the ensemble learning framework to obtain a more robust classification algorithm, termed "SRN-BRF". Rigorous experimentation has been conducted on 26 imbalanced datasets with varying degrees of imbalance. In virtually all datasets, the proposed two algorithms outperformed existing sampling strategies, in many cases by a substantial margin. Especially in highly imbalanced datasets where popular sampling techniques failed utterly, they achieved unparalleled performance. The superior results obtained demonstrate the efficacy of the proposed models and their potential to be powerful sampling algorithms in imbalanced domain.
翻译:在分类任务中,分类不平衡是一种经常发生的情景。从不平衡的数据中学习是一个重大挑战,它引发了这一领域的大量研究。使用抽样技术进行数据预处理是处理数据不平衡的一种标准方法。由于标准分类算法在不平衡数据方面表现不佳,因此数据集在培训前需要充分平衡。这可以通过过度抽样少数类或低抽取多数类来完成。在这项研究中,提出了新的混合采样算法。为了克服抽样技术的局限性,同时确保所保留的抽样数据集的质量,已经开发了一个复杂的框架,适当地结合三种不同的抽样技术。邻里清理规则首先用于减少不平衡。随机抽查在战略上与SMOTE算法相配合,以便在数据集中取得最佳平衡。这一拟议混合方法称为“SMOTE-RUS-NC”,与其它最先进的采样技术进行了比较。这一战略被进一步纳入混合学习框架,以获得更稳妥的、更稳健的分类算法,称为“SRN-BERF”的清理规则,然后在战略中随机随机随机随机抽抽查,在现有的数据分析中,在高比例分析中,在现有的数据分析中,在数据分析中,在高比例分析中进行。在数据分析中,在高的模型中,对数据分析中,在数据分析中,对数据分析中,对数据分析中,对数据进行了两个进行。