Small Datasets
Research on small datasets focuses on developing machine learning models that achieve high performance despite limited training data, a common constraint across many scientific domains. Current efforts concentrate on techniques like data augmentation (including extrapolation and generative methods), transfer learning, and the adaptation of model architectures such as Vision Transformers and convolutional neural networks for improved efficiency and robustness with small datasets. These advancements are crucial for accelerating scientific discovery and enabling practical applications in fields where large datasets are expensive or impossible to obtain, such as materials science, medical imaging, and precision agriculture.
Papers
February 28, 2024
February 22, 2024
February 9, 2024
February 6, 2024
January 13, 2024
December 28, 2023
December 27, 2023
December 15, 2023
November 13, 2023
October 5, 2023
September 19, 2023
September 11, 2023
September 7, 2023
September 4, 2023
August 12, 2023
August 3, 2023
June 14, 2023
May 23, 2023
May 15, 2023
May 8, 2023