Combining Denoising Autoencoders with Contrastive Learning to fine-tune Transformer Models

Alejo Lopez-Avila, Víctor Suárez-Paniagua
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Abstract

Recently, using large pretrained Transformer models for transfer learning tasks has evolved to the point where they have become one of the flagship trends in the Natural Language Processing (NLP) community, giving rise to various outlooks such as prompt-based, adapters or combinations with unsupervised approaches, among many others. This work proposes a 3 Phase technique to adjust a base model for a classification task. First, we adapt the model's signal to the data distribution by performing further training with a Denoising Autoencoder (DAE). Second, we adjust the representation space of the output to the corresponding classes by clustering through a Contrastive Learning (CL) method. In addition, we introduce a new data augmentation approach for Supervised Contrastive Learning to correct the unbalanced datasets. Third, we apply fine-tuning to delimit the predefined categories. These different phases provide relevant and complementary knowledge to the model to learn the final task. We supply extensive experimental results on several datasets to demonstrate these claims. Moreover, we include an ablation study and compare the proposed method against other ways of combining these techniques.
将去噪自动编码器与对比学习相结合,对变压器模型进行微调
最近,在迁移学习任务中使用大型预训练 Transformer 模型已经发展到了成为自然语言处理(NLP)领域主要趋势之一的地步,并引发了基于提示、适配器或与无监督方法相结合等各种观点。这项工作提出了一种三阶段技术,用于调整分类任务的基础模型。首先,通过使用去噪自动编码器(DAE)进行进一步训练,使模型信号适应数据分布。其次,我们通过对比学习(Contrastive Learning,CL)方法进行聚类,将输出的表示空间调整为相应的类别。此外,我们还为监督对比学习引入了一种新的数据增强方法,以纠正不平衡的数据集。第三,我们应用微调来划分预定义的类别。这些不同阶段为模型学习最终任务提供了相关的互补知识。我们在多个数据集上提供了大量实验结果,以证明这些说法。此外,我们还进行了一项消融研究,并将所提出的方法与结合这些技术的其他方法进行了比较。
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