Research Square (Research Square)
Hyperactive learning for data-driven interatomic potentials
November 2022 • Cas van der Oord, Matthias Sachs, David Kovacs, Christoph Ortner, Gábor Cśanyi
Abstract Data-driven interatomic potentials have emerged as a powerful class of surrogate models for ab initio potential energy surfaces that are able to reliably predict macroscopic properties with experimental accuracy. In generating accurate and transferable potentials the most time-consuming and arguably most important task is generating the training set, which still requires significant expert user input. To accelerate this process, this work presents hyperactive learning (HAL), a framework for formulating an…