1. Smote:Synthetic minority over-sampling technique;Chawla;Journal of Artificial International Research,2002
2. Wasserstein distance based deep adversarial transfer learning for intelligent fault diagnosis with unlabeled or insufficient labeled data;Cheng;Neurocomputing,2020
3. Class-balanced loss based on effective number of samples;Cui Yin;Computer Vision and Pattern Recognition,2019
4. A hybrid fine-tuned VMD and CNN scheme for untrained compound fault diagnosis of rotating machinery with unequal-severity faults;Dibaj;Expert Systems with Applications,2020
5. Domain-adversarial training of neural networks;Ganin;Journal of Machine Learning Research,2016