Issue 47, 2019

A shared-weight neural network architecture for predicting molecular properties

Abstract

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.

Graphical abstract: A shared-weight neural network architecture for predicting molecular properties

Article information

Article type
Paper
Submitted
31 May 2019
Accepted
08 Nov 2019
First published
12 Nov 2019

Phys. Chem. Chem. Phys., 2019,21, 26175-26183

A shared-weight neural network architecture for predicting molecular properties

T. A. Profitt and J. K. Pearson, Phys. Chem. Chem. Phys., 2019, 21, 26175 DOI: 10.1039/C9CP03103K

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