Radio Praha in English, 4.5.2018.
Experts from the Institute of...
Computational discovery, design and study of novel molecules and materials requires accurate electronic structure calculations, whose high computational cost is often a limiting factor. In high-throughput settings, machine learning can significantly reduce overall computational costs by rapidly and accurately interpolating between reference calculations. Effectively, the problem of solving a complex equation such as the electronic Schrödinger equation for many related poly-atomic systems is mapped onto a nonlinear statistical regression problem [1].
I will introduce essential machine learning concepts, give a brief overview of machine learning for electronic structure calculations, and present our latest contribution, the many-body tensor representation [2] which enables predictions for both molecules and crystals, with state-of-the-art empirical performance on a variety of benchmark datasets.
[1] Matthias Rupp, Alexandre Tkatchenko, Klaus-Robert Müller, O. Anatole von Lilienfeld: Fast and Accurate Modeling of Molecular Atomization Energies with Machine Learning, Physical Review Letters 108: 058301, 2012.
[2] Haoyan Huo, Matthias Rupp: Unified Representation of Molecules and Crystals for Machine Learning, arXiv 1704.06439, 2017.