Conditional Diffusion Based on Discrete Graph Structures for Molecular Graph Generation
Abstract
Learning the underlying distribution of molecular graphs and generating high-fidelity samples is a fundamental research problem in drug discovery and material science. However, accurately modeling distribution and rapidly generating novel molecular graphs remain crucial and challenging goals. To accomplish these goals, we propose a novel Conditional Diffusion model based on discrete Graph Structures (CDGS) for molecular graph generation. Specifically, we construct a forward graph diffusion process on both graph structures and inherent features through stochastic differential equations (SDE) and derive discrete graph structures as the condition for reverse generative processes. We present a specialized hybrid graph noise prediction model that extracts the global context and the local node-edge dependency from intermediate graph states. We further utilize ordinary differential equation (ODE) solvers for efficient graph sampling, based on the semi-linear structure of the probability flow ODE. Experiments on diverse datasets validate the effectiveness of our framework. Particularly, the proposed method still generates high-quality molecular graphs in a limited number of steps.
Cite
Text
Huang et al. "Conditional Diffusion Based on Discrete Graph Structures for Molecular Graph Generation." NeurIPS 2022 Workshops: SBM, 2022.Markdown
[Huang et al. "Conditional Diffusion Based on Discrete Graph Structures for Molecular Graph Generation." NeurIPS 2022 Workshops: SBM, 2022.](https://mlanthology.org/neuripsw/2022/huang2022neuripsw-conditional-a/)BibTeX
@inproceedings{huang2022neuripsw-conditional-a,
title = {{Conditional Diffusion Based on Discrete Graph Structures for Molecular Graph Generation}},
author = {Huang, Han and Sun, Leilei and Du, Bowen and Lv, Weifeng},
booktitle = {NeurIPS 2022 Workshops: SBM},
year = {2022},
url = {https://mlanthology.org/neuripsw/2022/huang2022neuripsw-conditional-a/}
}