Unsupervised Domain Adaption
Unsupervised domain adaptation (UDA) tackles the challenge of applying models trained on labeled data (source domain) to unlabeled data from a different distribution (target domain). Current research focuses on leveraging pre-trained models, particularly vision-language models and convolutional neural networks, employing techniques like pseudo-labeling, contrastive learning, and optimal transport to bridge the domain gap. These advancements are significant because they reduce the reliance on extensive labeled datasets, enabling the application of machine learning to diverse real-world scenarios where labeled data is scarce or expensive to obtain.
Papers
October 10, 2024
September 29, 2024
August 5, 2024
July 4, 2024
July 1, 2024
December 28, 2023
October 13, 2023
August 23, 2023
August 14, 2023
April 19, 2023
April 16, 2023
March 25, 2023
January 18, 2023
November 16, 2022
July 29, 2022
July 20, 2022
May 22, 2022
May 7, 2022
March 7, 2022