LGDIS-NNSep 2, 2021

Heterogeneous relational message passing networks for molecular dynamics simulations

arXiv:2109.00711v130 citations
Originality Incremental advance
AI Analysis

This work addresses the problem of accurately modeling diverse interactions in molecular systems for researchers in computational sciences, representing an incremental improvement over existing methods.

The paper tackled the limitation of existing machine learning models that use homogeneous graphs for molecular systems by proposing HermNet, a heterogeneous graph neural network, which outperformed other models in 75% to 94% of tasks across various datasets with ab initio accuracy.

With many frameworks based on message passing neural networks proposed to predict molecular and bulk properties, machine learning methods have tremendously shifted the paradigms of computational sciences underpinning physics, material science, chemistry, and biology. While existing machine learning models have yielded superior performances in many occasions, most of them model and process molecular systems in terms of homogeneous graph, which severely limits the expressive power for representing diverse interactions. In practice, graph data with multiple node and edge types is ubiquitous and more appropriate for molecular systems. Thus, we propose the heterogeneous relational message passing network (HermNet), an end-to-end heterogeneous graph neural networks, to efficiently express multiple interactions in a single model with {\it ab initio} accuracy. HermNet performs impressively against many top-performing models on both molecular and extended systems. Specifically, HermNet outperforms other tested models in nearly 75\%, 83\% and 94\% of tasks on MD17, QM9 and extended systems datasets, respectively. Finally, we elucidate how the design of HermNet is compatible with quantum mechanics from the perspective of the density functional theory. Besides, HermNet is a universal framework, whose sub-networks could be replaced by other advanced models.

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