Machine learning to tame divergent density functional approximations: a new path to consensus materials design principles
Chenru Duan, Shuxin Chen, Michael G. Taylor, Fang Liu, and Heather J., Kulik

TL;DR
This paper introduces a machine learning approach to reconcile divergent density functional approximations in DFT calculations, enabling more reliable virtual screening of transition metal complexes for materials discovery.
Contribution
It develops a strategy to train ML models across multiple DFAs, providing DFA-invariant design rules and consensus predictions to improve accuracy in high-throughput screening.
Findings
High linear correlation of properties across DFAs.
Consensus-based ML improves agreement with experimental data.
DFA-invariant features enable universal design principles.
Abstract
Computational virtual high-throughput screening (VHTS) with density functional theory (DFT) and machine-learning (ML)-acceleration is essential in rapid materials discovery. By necessity, efficient DFT-based workflows are carried out with a single density functional approximation (DFA). Nevertheless, properties evaluated with different DFAs can be expected to disagree for the cases with challenging electronic structure (e.g., open shell transition metal complexes, TMCs) for which rapid screening is most needed and accurate benchmarks are often unavailable. To quantify the effect of DFA bias, we introduce an approach to rapidly obtain property predictions from 23 representative DFAs spanning multiple families and "rungs" (e.g., semi-local to double hybrid) and basis sets on over 2,000 TMCs. Although computed properties (e.g., spin-state ordering and frontier orbital gap) naturally differ…
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Taxonomy
TopicsMachine Learning in Materials Science · X-ray Diffraction in Crystallography · Computational Drug Discovery Methods
MethodsDirect Feedback Alignment
