Self-supervised learning (SSL) methods aim to exploit the abundance of unlabelled data for machine learning (ML), however the underlying principles are often method-specific. An SSL framework derived from biological first principles of embodied learning could unify the various SSL methods, help elucidate learning in the brain, and possibly improve ML. SSL commonly transforms each training datapoint into a pair of views, uses the knowledge of this pairing as a positive (i.e. non-contrastive) self-supervisory sign, and potentially opposes it to unrelated, (i.e. contrastive) negative examples. Here, we show that this type of self-supervision is an incomplete implementation of a concept from neuroscience, the Efference Copy (EC). Specifically, the brain also transforms the environment through efference, i.e. motor commands, however it sends to itself an EC of the full commands, i.e. more than a mere SSL sign. In addition, its action representations are likely egocentric. From such a principled foundation we formally recover and extend SSL methods such as SimCLR, BYOL, and ReLIC under a common theoretical framework, i.e. Self-supervision Through Efference Copies (S-TEC). Empirically, S-TEC restructures meaningfully the within- and between-class representations. This manifests as improvement in recent strong SSL baselines in image classification, segmentation, object detection, and in audio. These results hypothesize a testable positive influence from the brain's motor outputs onto its sensory representations.
翻译:自监督的学习方法(SSL)旨在利用大量未贴标签的数据进行机器学习,但基本原则往往是方法上特有的。基于生物学第一原则的自我监督框架(SLF)可以统一各种自成一体的学习方法,帮助在大脑中进行学习,并有可能改进ML。SSL通常将每个培训数据点转换成一对观点,将这种配对的知识用作积极的(即非自控的)自我监督符号,并可能反对它成为无关的(对比性的)负面例子。在这里,我们表明这种自检观点是神经科学、Efference 复制(EC)中的概念执行不完全。具体地说,大脑还通过松动(即运动指令)来改变环境,而将全控的EC传递给自己,即不仅仅是SSSLF信号。此外,它的行动表现可能是自我中心。从这样一个原则基础中,我们正式恢复并扩展了SLF方法,如SimCLR、LELO和RELLA 图像结构,在共同的SAL-S-S-S-S-S-SLS-S-Sliver Recal Exlial Exliversal Excial Expral 上,在Sliversal-al-visal-al real-al-resmal-al real-resmal-resmal-al-al-visal-al-al-resmal resutal resutal resm-resmal resmal resmal resmal resmbal resmal restitional ress ress ress restiction ress ress ress ress ress ress ress ress ress ress ress resmbal resmbal ress ress ress ress ress resmbal resmbal resmbal resmal resmbal-labal resmal ress ress ress ress ress ress ress ress ress resm ress ress ress ress ress ress ress