Nearest Neighbour Score Estimators for Diffusion Generative Models
Abstract
Score function estimation is the cornerstone of both training and sampling from diffusion generative models. Despite this fact, the most commonly used estimators are either biased neural network approximations or high variance Monte Carlo estimators based on the conditional score. We introduce a novel nearest neighbour score function estimator which utilizes multiple samples from the training set to dramatically decrease estimator variance. We leverage our low variance estimator in two compelling applications. Training consistency models with our estimator, we report a significant increase in both convergence speed and sample quality. In diffusion models, we show that our estimator can replace a learned network for probability-flow ODE integration, opening promising new avenues of future research.
Cite
@article{arxiv.2402.08018,
title = {Nearest Neighbour Score Estimators for Diffusion Generative Models},
author = {Matthew Niedoba and Dylan Green and Saeid Naderiparizi and Vasileios Lioutas and Jonathan Wilder Lavington and Xiaoxuan Liang and Yunpeng Liu and Ke Zhang and Setareh Dabiri and Adam Ścibior and Berend Zwartsenberg and Frank Wood},
journal= {arXiv preprint arXiv:2402.08018},
year = {2024}
}
Comments
25 pages, 9 figures. To be published in ICML 2024