A Universal Density Matrix Functional from Molecular Orbital-Based Machine Learning: Transferability across Organic Molecules

01/10/2019
by   Lixue Cheng, et al.
0

We address the degree to which machine learning can be used to accurately and transferably predict post-Hartree-Fock correlation energies. After presenting refined strategies for feature design and selection, the molecular-orbital-based machine learning (MOB-ML) method is first applied to benchmark test systems. It is shown that the total electronic energy for a set of 1000 randomized geometries of water can be described to within 1 millihartree using a model that is trained at the level of MP2, CCSD, or CCSD(T) using only a single reference calculation at a randomized geometry. To explore the breadth of chemical diversity that can be described, the MOB-ML method is then applied a set of 7211 organic models with up to seven heavy atoms. It is shown that MP2 calculations on only 90 molecules are needed to train a model that predicts MP2 energies to within 2 millihartree accuracy for the remaining 7121 molecules; likewise, CCSD(T) calculations on only 150 molecules are needed to train a model that predicts CCSD(T) energies for the remaining molecules to within 2 millihartree accuracy. The MP2 model, trained with only 90 reference calculations on seven-heavy-atom molecules, is then applied to a diverse set of 1000 thirteen-heavy-atom organic molecules, demonstrating transferable preservation of chemical accuracy.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset
Success!
Error Icon An error occurred

Sign in with Google

×

Use your Google Account to sign in to DeepAI

×

Consider DeepAI Pro