1. Pseudo-labeling and confirmation bias in deep semi-supervised learning;Arazo,2019
2. Athiwaratkun, B., Finzi, M., Izmailov, P., & Wilson, A. G. (2019). There are many consistent explanations of unlabeled data: Why you should average. In International conference on learning representations.
3. ReMixMatch: Semi-supervised learning with distribution alignment and augmentation anchoring;Berthelot,2020
4. Mixmatch: A holistic approach to semi-supervised learning;Berthelot,2019
5. Chen, Y., Zhu, X., & Gong, S. (2018). Semi-supervised deep learning with memory. In Proceedings of the European conference on computer vision (pp. 268–283).