Normalizing Flow
Normalizing flows are a class of generative models that learn complex probability distributions by transforming a simple base distribution through a series of invertible transformations. Current research focuses on improving the efficiency and scalability of these flows, particularly for high-dimensional and multi-modal data, with advancements in architectures like continuous normalizing flows and the development of novel training algorithms such as flow matching. These models find applications across diverse fields, including image generation, Bayesian inference, and scientific modeling, offering advantages in density estimation, sampling, and uncertainty quantification.
Papers
Deep(er) Reconstruction of Imaging Cherenkov Detectors with Swin Transformers and Normalizing Flow Models
Cristiano Fanelli, James Giroux, Justin Stevens
Flow to Rare Events: An Application of Normalizing Flow in Temporal Importance Sampling for Automated Vehicle Validation
Yichun Ye, He Zhang, Ye Tian, Jian Sun, Karl Meinke