Focal Loss Improves the Model Performance on Multi-Label Image Classifications with Imbalanced Data

Jianxiang Dong
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引用次数: 2

Abstract

Dealing with imbalanced data has always been a great challenge in statistical learning. In classification problems, instances for different classes are unequal in an imbalanced dataset. Therefore, traditional machine learning classification algorithms are usually sensitive to this imbalance both in the training and inference processes. In this paper, by addressing the class imbalance on the basis of Focal Loss, we introduce an approach to improve the performance of convolutional neural networks (CNNs) on the multi-label image classification with an extremely imbalanced dataset. As focal loss puts more focus on hard and misclassified examples when comparing with classic cross-entropy loss, our results demonstrate that such loss function indeed achieves a significant improvement of CNN models (ResNet-50, ResNet-101, and SE-ResNeXt-101) regarding the mean F2 scores on the test set.
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焦损提高了模型在数据不平衡的多标签图像分类中的性能
处理不平衡数据一直是统计学习中的一大挑战。在分类问题中,不同类别的实例在不平衡数据集中是不相等的。因此,传统的机器学习分类算法在训练和推理过程中通常对这种不平衡很敏感。本文通过解决基于焦点损失的类不平衡问题,提出了一种改进卷积神经网络(cnn)在极度不平衡数据集下的多标签图像分类性能的方法。与经典交叉熵损失相比,焦点损失更关注硬分类和错误分类的例子,我们的结果表明,这种损失函数确实实现了CNN模型(ResNet-50, ResNet-101和SE-ResNeXt-101)在测试集上的平均F2分数方面的显着改进。
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