Score Based Generative
Score-based generative models (SBMs) are a class of deep generative models that learn the data distribution by modeling the score function—the gradient of the log-probability density—of a perturbed data distribution. Current research focuses on improving SBM efficiency and robustness through novel training objectives, algorithms like Langevin dynamics and probability flow ODEs, and architectural innovations such as incorporating symmetries and handling high-cardinality data. SBMs are proving valuable across diverse fields, from image generation and speech enhancement to solving inverse problems in medical imaging and astrophysics, offering a powerful tool for both data generation and inference tasks.
Papers
October 8, 2022
September 28, 2022
September 26, 2022
September 22, 2022
September 20, 2022
August 25, 2022
August 9, 2022
July 22, 2022
July 7, 2022
July 5, 2022
June 29, 2022
June 17, 2022
June 16, 2022
June 13, 2022
June 10, 2022
June 8, 2022
June 2, 2022