Department of Chemistry, University of Prince Edward Island, Charlottetown, PE, Canada.
Phys Chem Chem Phys. 2019 Dec 4;21(47):26175-26183. doi: 10.1039/c9cp03103k.
Quantum chemical methods scale poorly with increasing molecular size and machine learning models have emerged as a promising, computationally-efficient alternative. We present a shared-weight neural network architecture based on modified atom-centered symmetry functions (ACSFs) and show that it performs similarly to the more computationally expensive per-element neural networks of previous work with ACSFs. The model achieves chemically accurate predictions, with a mean absolute error as low as 0.63 kcal mol-1 on energy predictions in the QM9 data set. Additionally, we show that it can reliably predict atomic forces.
量子化学方法在分子尺寸增加时扩展效果不佳,机器学习模型已成为一种很有前途、计算效率高的替代方法。我们提出了一种基于改进的原子中心对称函数(ACSF)的共享权重神经网络架构,并表明它与以前使用 ACSF 的更昂贵的每个元素神经网络具有相似的性能。该模型能够实现化学准确预测,在 QM9 数据集的能量预测中,平均绝对误差低至 0.63 kcal mol-1。此外,我们还表明它可以可靠地预测原子力。