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Diffusion and Score-Based Generative Models

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MITCBMM

Yang Song, Stanford University

Generating data with complex patterns, such as images, audio, and molecular structures, requires fitting very flexible statistical models to the data distribution. Even in the age of deep neural networks, building such models is difficult because they typically require an intractable normalization procedure to represent a probability distribution. To address this challenge, we consider modeling the vector field of gradients of the data distribution (known as the score function), which does not require normalization and therefore can take full advantage of the flexibility of deep neural networks. I will show how to (1) estimate the score function from data with flexible deep neural networks and efficient statistical methods, (2) generate new data using stochastic differential equations and Markov chain Monte Carlo, and even (3) evaluate probability values accurately as in a traditional statistical model. The resulting method, called scorebased generative modeling or diffusion modeling, achieves record performance in applications including image synthesis, texttospeech generation, time series prediction, and point cloud generation, challenging the longtime dominance of generative adversarial networks (GANs) on many of these tasks. Furthermore, scorebased generative models are particularly suitable for Bayesian reasoning tasks such as solving illposed inverse problems, yielding superior performance on several tasks in medical image reconstruction.

posted by Ovestenit64