Data Augmentation
Data augmentation is a technique used to artificially expand datasets by creating modified versions of existing data, primarily to improve the performance and robustness of machine learning models, especially when training data is scarce. Current research focuses on developing more sophisticated augmentation methods, including those leveraging generative models like GANs and diffusion models, and integrating augmentation with other techniques such as contrastive learning and transfer learning, often applied within architectures like transformers and convolutional neural networks. This work is significant because it addresses the limitations of limited datasets across various domains, from image classification and object detection to natural language processing and time series forecasting, leading to more accurate and generalizable models for diverse applications.
Papers
AutoAugment Is What You Need: Enhancing Rule-based Augmentation Methods in Low-resource Regimes
Juhwan Choi, Kyohoon Jin, Junho Lee, Sangmin Song, Youngbin Kim
A Novel Approach to WaveNet Architecture for RF Signal Separation with Learnable Dilation and Data Augmentation
Yu Tian, Ahmed Alhammadi, Abdullah Quran, Abubakar Sani Ali
Trapped in texture bias? A large scale comparison of deep instance segmentation
Johannes Theodoridis, Jessica Hofmann, Johannes Maucher, Andreas Schilling
On the Effect of Data-Augmentation on Local Embedding Properties in the Contrastive Learning of Music Audio Representations
Matthew C. McCallum, Matthew E. P. Davies, Florian Henkel, Jaehun Kim, Samuel E. Sandberg