利用变压器中的注意力限制改善睡眠阶段分类的归纳能力

Dongyoung Kim, Dong-Kyu Kim, Jeong-Gun Lee
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引用次数: 0

摘要

转换器架构在自然语言处理和视觉识别等许多任务中都得到了有效应用。使用基于变换器的架构最重要也是最一般的要求是,模型必须在大规模数据集上进行训练,然后才能针对下游任务进行微调。然而,我们在实验中发现,与基于 CNN 的架构相比,基于变换器的架构在从睡眠阶段分类的数据样本中提取特征方面具有更好的泛化能力,即使在没有任何额外预训练步骤的小规模数据集上也是如此。在本文中,我们特别使用了一个小规模数据集,展示了变换器架构在睡眠阶段分类任务中的泛化能力优于传统的 CNN 架构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved Generalization from Limiting Attention in a Transformer for Sleep Stage Classification
A transformer architecture has been employed effectively on many tasks such as natural language processing and vision recognition. The most important and general requirement of utilizing the transformer-based architecture is that the model has to be trained on a large-scale dataset before it can be fine-tuned for downstream tasks. However, in our experiments, we figure out that the transformer-based architecture has better generalization capability to extract features from data samples in sleep stage classification than CNN-based architectures, even with a small-scale dataset without any extra pretraining step. In this paper, we show the strength of the transformer architecture with regard to generalization capability over the conventional CNN architecture in sleep stage classification tasks specifically using a small-scale dataset.
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