Hierarchical Representation
Hierarchical representation learning aims to capture the nested structure of data, mirroring the way humans organize information, to improve model performance and interpretability. Current research focuses on developing novel architectures, such as hierarchical transformers and energy-based models, and algorithms like contrastive learning and variational Bayes, to learn these representations effectively across diverse data types, including images, text, and time series. This work is significant because improved hierarchical representations lead to more robust, efficient, and explainable models with applications ranging from medical image analysis and recommendation systems to robotics and music generation.
Papers
May 19, 2023
May 18, 2023
May 15, 2023
May 13, 2023
May 11, 2023
May 10, 2023
May 9, 2023
April 27, 2023
March 19, 2023
March 2, 2023
February 28, 2023
February 20, 2023
January 26, 2023
January 25, 2023
December 22, 2022
November 5, 2022
October 11, 2022
August 9, 2022