Machine Permutation
Machine permutation research explores how to effectively utilize and learn from data where the order of elements is unknown or irrelevant, focusing on developing algorithms and models robust to permutations. Current research emphasizes efficient permutation-invariant representations, particularly within deep learning architectures for tasks like graph neural networks and language models, often employing techniques like sorting, optimal transport, and Kronecker decompositions. This field is significant because it enables the analysis of data with inherent permutation symmetries, improving model efficiency and accuracy in various applications, including drug discovery, natural language processing, and materials science.
Papers
October 30, 2024
October 22, 2024
October 18, 2024
September 23, 2024
August 27, 2024
July 30, 2024
July 2, 2024
June 28, 2024
June 12, 2024
June 3, 2024
May 28, 2024
April 9, 2024
March 4, 2024
February 8, 2024
January 29, 2024
December 19, 2023
November 30, 2023
November 24, 2023
November 13, 2023