Many particle physics datasets like those generated at colliders are described by continuous coordinates (in contrast to grid points like in an image), respect a number of symmetries (like permutation invariance), and have a stochastic dimensionality. For this reason, standard deep generative models that produce images or at least a fixed set of features are limiting. We introduce a new neural network simulation based on a diffusion model that addresses these limitations named Fast Point Cloud Diffusion (FPCD). We show that our approach can reproduce the complex properties of hadronic jets from proton-proton collisions with competitive precision to other recently proposed models. Additionally, we use a procedure called progressive distillation to accelerate the generation time of our method, which is typically a significant challenge for diffusion models despite their state-of-the-art precision.
@article{arxiv.2304.01266,
title = {Fast Point Cloud Generation with Diffusion Models in High Energy Physics},
author = {Vinicius Mikuni and Benjamin Nachman and Mariel Pettee},
journal= {arXiv preprint arXiv:2304.01266},
year = {2023}
}