Structured Representation
Structured representation learning aims to create data representations that explicitly capture underlying relationships and compositional structures, improving generalization and efficiency in machine learning. Current research focuses on developing methods that disentangle factors of variation, learn object-centric representations, and integrate structured knowledge from sources like scene graphs and knowledge bases, often employing transformer networks, Koopman autoencoders, and various attention mechanisms. These advancements are significant because they enable more robust, interpretable, and data-efficient models with applications ranging from image generation and super-resolution to question answering and robotic control.
Papers
June 4, 2024
June 3, 2024
May 17, 2024
May 15, 2024
May 6, 2024
April 27, 2024
April 24, 2024
April 23, 2024
March 28, 2024
March 27, 2024
March 26, 2024
February 3, 2024
January 18, 2024
January 12, 2024
December 11, 2023
December 5, 2023
November 21, 2023
November 7, 2023
September 22, 2023