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A New Approach for Imbalanced Data Classification Based on Minimize Loss Learning

机译:基于最小化学习损失的不平衡数据分类新方法

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The class imbalance problem occurs when instances in one class are more than that in another. It has been reported to severely hinder classification performance of many traditional classification algorithms and many researchers have paid a great deal of attention to this field. Different kinds of methods have been pro-posed to solve the problem these years, such as resampling methods, integrated learning method. However, these conventional class imbalance handling methods might suffer from the loss of potentially useful information, unexpected mistakes or increasing the likelihood of overfitting because they may alter the original data distribution. In this study, we propose a new method for imbalanced data sets which is different from previously proposed solutions to the class imbalance problem. We put forward the idea that treat the performance measures as training target, then designed the loss function and build a model based on artificial neural network to solve the problem. The experimental results on 8 imbalanced data sets show that our proposed method is usually superior to the conventional imbalanced data handling methods.
机译:当一个类中的实例多于另一个类中的实例时,就会发生类不平衡问题。据报道,它严重阻碍了许多传统分类算法的分类性能,许多研究者对此领域给予了极大的关注。近年来,已经提出了各种方法来解决该问题,例如重采样方法,集成学习方法。但是,这些常规的类别不平衡处理方法可能会丢失潜在有用的信息,发生意外错误或增加过度拟合的可能性,因为它们可能会更改原始数据的分布。在这项研究中,我们提出了一种新的不平衡数据集方法,该方法不同于先前提出的类不平衡问题的解决方案。提出了将性能指标作为训练目标的思想,然后设计了损失函数,并建立了基于人工神经网络的模型来解决该问题。在8个不平衡数据集上的实验结果表明,我们提出的方法通常优于常规的不平衡数据处理方法。

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