Neural P$^3$M: A Long-Range Interaction Modeling Enhancer for Geometric GNNs

  • Yusong Wang ,
  • Chaoran Cheng ,
  • Shaoning Li ,
  • Yuxuan Ren ,
  • Bin Shao ,
  • Ge Liu ,
  • Pheng-Ann Heng ,
  • Nanning Zheng

NeurIPS 2024 |

Geometric graph neural networks (GNNs) have emerged as powerful tools for modeling molecular geometry. However, they encounter limitations in effectively capturing long-range interactions in large molecular systems. To address this challenge, we introduce Neural P$^3$M, a versatile enhancer of geometric GNNs to expand the scope of their capabilities by incorporating mesh points alongside atoms and reimaging traditional mathematical operations in a trainable manner. Neural P$^3$M exhibits flexibility across a wide range of molecular systems and demonstrates remarkable accuracy in predicting energies and forces, outperforming on benchmarks such as the MD22 dataset. It also achieves an average improvement of 22% on the OE62 dataset while integrating with various architectures.