Unpaired Data
Unpaired data learning tackles the challenge of training machine learning models, particularly generative models, when paired input-output examples are scarce or unavailable. Current research focuses on developing algorithms and architectures, such as CycleGANs, diffusion models, and variational autoencoders, that leverage unpaired data to achieve image-to-image translation, video enhancement, audio manipulation, and other tasks. This approach is significant because it expands the applicability of deep learning to numerous domains where obtaining paired datasets is impractical or prohibitively expensive, leading to advancements in diverse fields like medical imaging, speech processing, and computer vision.
Papers
June 8, 2023
June 7, 2023
May 24, 2023
April 11, 2023
March 29, 2023
February 16, 2023
February 13, 2023
February 10, 2023
February 8, 2023
February 2, 2023
January 23, 2023
November 2, 2022
October 14, 2022
September 30, 2022
August 12, 2022
July 11, 2022
April 26, 2022
April 21, 2022