New Journal of Physics (Jan 2017)

Learning physical descriptors for materials science by compressed sensing

  • Luca M Ghiringhelli,
  • Jan Vybiral,
  • Emre Ahmetcik,
  • Runhai Ouyang,
  • Sergey V Levchenko,
  • Claudia Draxl,
  • Matthias Scheffler

DOI
https://doi.org/10.1088/1367-2630/aa57bf
Journal volume & issue
Vol. 19, no. 2
p. 023017

Abstract

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The availability of big data in materials science offers new routes for analyzing materials properties and functions and achieving scientific understanding. Finding structure in these data that is not directly visible by standard tools and exploitation of the scientific information requires new and dedicated methodology based on approaches from statistical learning, compressed sensing, and other recent methods from applied mathematics, computer science, statistics, signal processing, and information science. In this paper, we explain and demonstrate a compressed-sensing based methodology for feature selection, specifically for discovering physical descriptors, i.e., physical parameters that describe the material and its properties of interest, and associated equations that explicitly and quantitatively describe those relevant properties. As showcase application and proof of concept, we describe how to build a physical model for the quantitative prediction of the crystal structure of binary compound semiconductors.

Keywords