Stochastic Localization via Iterative Posterior Sampling (Alain Durmus)
Faculty of Computer Science Colloquium
Building upon score-based learning, new interest in stochastic localization techniques has recently emerged. In these models, one seeks to noise a sample from the data distribution through a stochastic process, called observation process, and progressively learns a denoiser associated to this dynamics. Apart from specific applications, the use of stochastic localization for the problem of sampling from an unnormalized target density has not been explored extensively. This work contributes to fill this gap. We consider a general stochastic localization framework and introduce an explicit class of observation processes, associated with flexible denoising schedules. We provide a complete methodology, Stochastic Localization via Iterative Posterior Sampling (SLIPS), to obtain approximate samples of these dynamics, and as a by-product, samples from the target distribution. Our scheme is based on a Markov chain Monte Carlo estimation of the denoiser and comes with detailed practical guidelines. We illustrate the benefits and applicability of SLIPS on the challenging setting of sampling from multimodal distributions.
Joint work with Louis Grenioux, Maxence Noble et Marylou Gabrié.
Speaker: Alain Durmus, Ecole Polytechnique, CMAP.
11 June 2024
1,825 view
210
52
2 months ago 01:14:05 1.8K
Stochastic Localization via Iterative Posterior Sampling (Alain Durmus)
7 months ago 00:07:05 10
Your Brain as Math - Part 1 | Infinite Series
1 year ago 00:41:45 1
Siraj Raval - Offline AI on iOS and Android
1 year ago 01:00:01 1
Ultra Deep Isochronic Tones 95 Hz | High Gamma Brain Waves
7 years ago 01:41:18 47
NIPS 2017 - presentations from the Theory, Probabilistic Methods sessions