细粒度情感与情绪分析中损失函数的设计与优化

Q3 Arts and Humanities Icon Pub Date : 2023-03-01 DOI:10.1109/ICNLP58431.2023.00037
Shiren Ye, Ding Li, Ali Md Rinku
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引用次数: 0

摘要

类别标签的不平衡分布以及这些标签之间的相关性往往会导致深度学习模型中的过度学习问题。在细粒度情感分析数据集中,类别标签之间的相关性和标签分布的异质性是突出的。在深度学习模型中,我们使用调整后的圆损失在损失函数中引入边际和梯度衰减,以处理标签分布不平衡和标签之间不独立所带来的挑战。该方法可以很好地与预训练模型相结合,适应各种学习模型和算法。与最先进的典型模型相比,我们使用SemEval18和GoeEmotions通过测量Jaccard系数、微观f1和宏观f1,我们的损失函数机制得到了显著改进。这意味着我们的解决方案可以有效地用于情感分析和情感分析任务。
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Design and Optimization of Loss Functions in Fine-grained Sentiment and Emotion Analysis
The unbalanced distribution of category labels and the correlation between these labels tend to cause over-learning issues in deep learning models. In fine-grained sentiment analysis datasets, the correlation between category labels and the heterogeneity of tag distribution are prominent. In the deep learning model, we use the adjusted circle-loss to introduce margin and gradient attenuation in the loss function to handle the challenges caused by unbalanced label distribution and non-independence between labels. This method can be well combined with pre-trained models and adapt to various learning models and algorithms. Compared with the state-of-the-art typical models, our loss function mechanism achieves significant improvement using SemEval18 and GoeEmotions by measure of Jaccard coefficient, micro-F1, and macro-F1. It implies that our solution could work efficiently for sentiment analysis and sentiment analysis tasks.
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Icon Arts and Humanities-History and Philosophy of Science
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