Post Hoc Orthogonalization
Post-hoc orthogonalization is a technique used to improve the properties of learned representations in machine learning models, primarily aiming to enhance disentanglement, reduce bias, and improve generalization. Current research focuses on applying this technique to various model architectures, including neural networks and knowledge graph embeddings, often incorporating contrastive learning or other regularization methods to achieve orthogonal feature spaces. This approach holds significance for mitigating biases in sensitive applications like healthcare and improving the efficiency and performance of various machine learning tasks, particularly in scenarios with limited data or complex relationships between features.
Papers
November 12, 2024
November 5, 2024
October 7, 2024
September 27, 2024
July 17, 2024
July 4, 2024
June 13, 2024
May 26, 2024
May 25, 2024
May 14, 2024
May 3, 2024
March 27, 2024
January 17, 2024
January 16, 2024
December 15, 2023
November 21, 2023
November 2, 2023
October 29, 2023
October 26, 2023