Self-supervised representation learning has seen remarkable progress in the last few years. More recently, contrastive instance learning has shown impressive results compared to its supervised learning counterparts. However, even with the ever increased interest in contrastive instance learning, it is still largely unclear why these methods work so well. In this paper, we aim to unravel some of the mysteries behind their success, which are the good practices. Through an extensive empirical analysis, we hope to not only provide insights but also lay out a set of best practices that led to the success of recent work in self-supervised representation learning.
翻译:在过去几年里,自我监督的代言学习取得了显著进展。最近,对比性实例学习与受监督的同行学习相比,取得了令人印象深刻的成果。然而,即使对对比性实例学习的兴趣日益浓厚,这些方法为什么效果如此好,在很大程度上仍不清楚。在本文件中,我们的目标是解开其成功背后的一些谜团,即良好做法。通过广泛的实证分析,我们希望不仅提供真知灼见,而且还提出一系列最佳做法,使最近自我监督的代言学习工作取得成功。