| Literature DB >> 35149486 |
Chen Qu1, Anthony J Kearsley2, Barry I Schneider3, Walid Keyrouz4, Thomas C Allison5.
Abstract
In this article, we describe training and validation of a machine learning model for the prediction of organic compound normal boiling points. Data are drawn from the experimental literature as captured in the NIST Thermodynamics Research Center (TRC) SOURCE Data Archival System. The machine learning model is based on a graph neural network approach, a methodology that has proven powerful when applied to a variety of chemical problems. Model input is extracted from a 2D sketch of the molecule, making the methodology suitable for rapid prediction of normal boiling points in a wide variety of scenarios. Our final model predicts normal boiling points within 6 K (corresponding to a mean absolute percent error of 1.32%) with sample standard deviation less than 8 K. Additionally, we found that our model robustly identifies errors in the input data set during the model training phase, thereby further motivating the utility of systematic data exploration approaches for data-related efforts. Published by Elsevier Inc.Entities:
Keywords: Deep learning; Graph neural network; Machine learning; Normal boiling point
Mesh:
Year: 2022 PMID: 35149486 DOI: 10.1016/j.jmgm.2022.108149
Source DB: PubMed Journal: J Mol Graph Model ISSN: 1093-3263 Impact factor: 2.518