AI RESEARCH

Closed-form conditional diffusion models for data assimilation

arXiv CS.LG

ArXi:2603.21291v1 Announce Type: cross We propose closed-form conditional diffusion models for data assimilation. Diffusion models use data to learn the score function (defined as the gradient of the log-probability density of a data distribution), allowing them to generate new samples from the data distribution by reversing a noise injection process. While it is common to train neural networks to approximate the score function, we leverage the analytical tractability of the score function to assimilate the states of a system with measurements.