大数据
计算机科学
量子化学
量子
量子化学
数据科学
机器学习
化学
数据挖掘
物理
物理化学
量子力学
有机化学
电极
分子
电化学
作者
Raghunathan Ramakrishnan,Pavlo O. Dral,Matthias Rupp,O. Anatole von Lilienfeld
标识
DOI:10.1021/acs.jctc.5b00099
摘要
Chemically accurate and comprehensive studies of the virtual space of all possible molecules are severely limited by the computational cost of quantum chemistry. We introduce a composite strategy that adds machine learning corrections to computationally inexpensive approximate legacy quantum methods. After training, highly accurate predictions of enthalpies, free energies, entropies, and electron correlation energies are possible, for significantly larger molecular sets than used for training. For thermochemical properties of up to 16k constitutional isomers of C$_7$H$_{10}$O$_2$ we present numerical evidence that chemical accuracy can be reached. We also predict electron correlation energy in post Hartree-Fock methods, at the computational cost of Hartree-Fock, and we establish a qualitative relationship between molecular entropy and electron correlation. The transferability of our approach is demonstrated, using semi-empirical quantum chemistry and machine learning models trained on 1 and 10\% of 134k organic molecules, to reproduce enthalpies of all remaining molecules at density functional theory level of accuracy.
科研通智能强力驱动
Strongly Powered by AbleSci AI