Many-body Expansion Based Machine Learning Models for Octahedral Transition Metal Complexes
Ralf Meyer, Daniel Benjamin Kasman Chu, and Heather J. Kulik

TL;DR
This paper introduces a many-body expansion-based modification to graph-based machine learning models for transition metal complexes, improving accuracy and generalization by incorporating stereoisomer information and electronic structure insights.
Contribution
The authors develop a novel MBE-based featurization method integrated with kernel ridge regression and neural networks, enhancing prediction accuracy for TMC properties and enabling systematic generalization.
Findings
Achieved 30-40% error reduction in spin-splitting energy predictions.
Improved model generalization to unseen ligands and heteroleptic complexes.
Systematic incorporation of stereoisomer information via MBE truncation.
Abstract
Graph-based machine learning models for materials properties show great potential to accelerate virtual high-throughput screening of large chemical spaces. However, in their simplest forms, graph-based models do not include any 3D information and are unable to distinguish stereoisomers such as those arising from different orderings of ligands around a metal center in coordination complexes. In this work we present a modification to revised autocorrelation descriptors, our molecular graph featurization method for machine learning various spin state dependent properties of octahedral transition metal complexes (TMCs). Inspired by analytical semi-empirical models for TMCs, the new modeling strategy is based on the many-body expansion (MBE) and allows one to tune the captured stereoisomer information by changing the truncation order of the MBE. We present the necessary modifications to…
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Taxonomy
TopicsMachine Learning in Materials Science
MethodsSparse Evolutionary Training
