Addressing Imbalance in Multi-Label Classification Using Weighted Cross Entropy Loss Function

M. Rezaei-Dastjerdehei, A. Mijani, E. Fatemizadeh
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引用次数: 10

Abstract

Training a model and network on an imbalanced dataset always has been a challenging problem in the machine learning field that has been discussed by researchers. In fact, available machine learning algorithms are designed moderately imbalanced datasets and mainly do not consider the dataset's imbalanced problem. In the machine learning algorithm, the imbalance problem appears when the number of one class samples are significantly minor than another class. In order to solve the imbalance problem of a dataset, multiple algorithms are proposed in the field of machine learning and especially in deep learning. In this study, we have benefited from weighted binary cross-entropy in the learning process as a loss function instead of ordinary cross-entropy (binary cross-entropy). This model allocates more penalty to minority class samples during the learning process, and it makes that minority class samples are detected more accurately. Finally, we could improve Recall with preserving Accuracy. In fact, results show that using weighted binary cross-entropy recall increases about 10%, and precision does not decrease more than 3% in comparison to binary cross-entropy.
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利用加权交叉熵损失函数解决多标签分类中的不平衡问题
在不平衡数据集上训练模型和网络一直是机器学习领域的一个具有挑战性的问题,研究人员一直在讨论这个问题。事实上,现有的机器学习算法都是设计适度不平衡的数据集,主要不考虑数据集的不平衡问题。在机器学习算法中,当一类样本的数量明显小于另一类样本的数量时,就会出现不平衡问题。为了解决数据集的不平衡问题,机器学习特别是深度学习领域提出了多种算法。在本研究中,我们在学习过程中受益于加权二元交叉熵作为损失函数而不是普通交叉熵(二元交叉熵)。该模型在学习过程中对少数类样本分配了更多的惩罚,使得对少数类样本的检测更加准确。最后,我们可以在保持准确率的前提下提高召回率。事实上,结果表明,与二元交叉熵相比,加权二元交叉熵的召回率提高了约10%,精度降低不超过3%。
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