Efficient and Equivariant Graph Networks for Predicting Quantum Hamiltonian

Haiyang Yu, Zhao Xu, X. Qian, Xiaoning Qian, Shuiwang Ji
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引用次数: 2

Abstract

We consider the prediction of the Hamiltonian matrix, which finds use in quantum chemistry and condensed matter physics. Efficiency and equivariance are two important, but conflicting factors. In this work, we propose a SE(3)-equivariant network, named QHNet, that achieves efficiency and equivariance. Our key advance lies at the innovative design of QHNet architecture, which not only obeys the underlying symmetries, but also enables the reduction of number of tensor products by 92\%. In addition, QHNet prevents the exponential growth of channel dimension when more atom types are involved. We perform experiments on MD17 datasets, including four molecular systems. Experimental results show that our QHNet can achieve comparable performance to the state of the art methods at a significantly faster speed. Besides, our QHNet consumes 50\% less memory due to its streamlined architecture. Our code is publicly available as part of the AIRS library (\url{https://github.com/divelab/AIRS}).
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预测量子哈密顿量的高效等变图网络
我们考虑了在量子化学和凝聚态物理中使用的哈密顿矩阵的预测。效率和等方差是两个重要但相互矛盾的因素。在这项工作中,我们提出了一个SE(3)-等变网络,命名为QHNet,实现了效率和等变。我们的关键进步在于QHNet架构的创新设计,它不仅遵循底层的对称性,而且使张量积的数量减少了92%。此外,当涉及更多原子类型时,QHNet可以防止通道尺寸的指数增长。我们在MD17数据集上进行实验,包括四个分子系统。实验结果表明,我们的QHNet可以以更快的速度获得与最先进方法相当的性能。此外,我们的QHNet由于其流线型架构而减少了50%的内存消耗。我们的代码作为AIRS库的一部分公开提供(\url{https://github.com/divelab/AIRS})。
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