Self-supervised learning (SSL) has had great success in both computer vision and natural language processing. These approaches often rely on cleverly crafted loss functions and training setups to avoid feature collapse. In this study, the effectiveness of mainstream SSL frameworks from computer vision and some SSL frameworks for time series are evaluated on the UCR, UEA and PTB-XL datasets, and we show that computer vision SSL frameworks can be effective for time series. In addition, we propose a new method that improves on the recently proposed VICReg method. Our method improves on a \textit{covariance} term proposed in VICReg, and in addition we augment the head of the architecture by an IterNorm layer that accelerates the convergence of the model.
翻译:自我监督的学习(SSL)在计算机视觉和自然语言处理方面都取得了巨大成功,这些方法往往依靠巧妙巧妙的丢失功能和培训设置来避免特征崩溃。在这项研究中,计算机视觉的主流SSL框架和某些时间序列的SSL框架在UCR、UEA和PTB-XL数据集上进行了评估,我们表明计算机视觉SSL框架可以对时间序列有效。此外,我们提出了一种新方法,改进了最近提议的ICRCReg方法。我们的方法改进了ICORReg 中提议的\ textitit{cevarience} 术语,此外,我们用加速模型趋同的IterNorm层来扩大结构的顶部。