Ye Shuqian, Liang Jiechun, Zhu Xi
School of Science and Engineering (SSE), Shenzhen Institute of Artificial Intelligence and Robotics for Society (AIRS), The Chinese University of Hong Kong, Shenzhen(CUHK-Shenzhen), 14-15F, Tower G2, Xinghe World, Rd Yabao, Longgang District, Shenzhen, Guangdong, 518172, China.
Phys Chem Chem Phys. 2021 Sep 29;23(37):20835-20840. doi: 10.1039/d1cp03594k.
Many current deep neural network (DNN) models only focus on straightforward optimization over the given database. However, most numerical fitting procedures depart from physical laws. By introducing the concept of "catalysis" from physical chemistry, we propose that the physical correlations among molecular properties could spontaneously act as a catalyst in the DNNs, which increases the accuracy, and more importantly, guides the DNNs in the right way. These Catalysis-DNNs (Cat-DNNs) could precisely predict both the ground and excited-state properties, especially the molecules' screening with singlet fission character. We show that traditional machine learning metrics are not suitable for evaluating model accuracy in physical-chemical tasks and issue new physical errors. We believe that the agile transfer of fundamental physics or chemistry domain knowledge, like the catalyst, could significantly benefit both the architecture and application of artificial intelligence technology in the future.
当前许多深度神经网络(DNN)模型仅专注于对给定数据库进行直接优化。然而,大多数数值拟合过程都偏离了物理定律。通过引入物理化学中的“催化”概念,我们提出分子性质之间的物理相关性可以在DNN中自发地充当催化剂,这提高了准确性,更重要的是,以正确的方式引导DNN。这些催化-DNN(Cat-DNN)可以精确预测基态和激发态性质,特别是具有单线态裂变特征的分子筛选。我们表明传统的机器学习指标不适用于评估物理化学任务中的模型准确性,并提出了新的物理误差。我们相信,像催化剂这样的基础物理或化学领域知识的灵活转移,未来可能会显著有益于人工智能技术的架构和应用。