Machine Learning: Science and Technology (Jan 2024)

Machine learning inspired models for Hall effects in non-collinear magnets

  • Jonathan Kipp,
  • Fabian R Lux,
  • Thorben Pürling,
  • Abigail Morrison,
  • Stefan Blügel,
  • Daniele Pinna,
  • Yuriy Mokrousov

DOI
https://doi.org/10.1088/2632-2153/ad51ca
Journal volume & issue
Vol. 5, no. 2
p. 025060

Abstract

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The anomalous Hall effect has been front and center in solid state research and material science for over a century now, and the complex transport phenomena in nontrivial magnetic textures have gained an increasing amount of attention, both in theoretical and experimental studies. However, a clear path forward to capturing the influence of magnetization dynamics on anomalous Hall effect even in smallest frustrated magnets or spatially extended magnetic textures is still intensively sought after. In this work, we present an expansion of the anomalous Hall tensor into symmetrically invariant objects, encoding the magnetic configuration up to arbitrary power of spin. We show that these symmetric invariants can be utilized in conjunction with advanced regularization techniques in order to build models for the electric transport in magnetic textures which are, on one hand, complete with respect to the point group symmetry of the underlying lattice, and on the other hand, depend on a minimal number of order parameters only. Here, using a four-band tight-binding model on a honeycomb lattice, we demonstrate that the developed method can be used to address the importance and properties of higher-order contributions to transverse transport. The efficiency and breadth enabled by this method provides an ideal systematic approach to tackle the inherent complexity of response properties of noncollinear magnets, paving the way to the exploration of electric transport in intrinsically frustrated magnets as well as large-scale magnetic textures.

Keywords