% IMPORTANT: The following is UTF-8 encoded. This means that in the presence
% of non-ASCII characters, it will not work with BibTeX 0.99 or older.
% Instead, you should use an up-to-date BibTeX implementation like “bibtex8” or
% “biber”.
@INPROCEEDINGS{Hilgers:1005347,
author = {Hilgers, Robin and Wortmann, Daniel and Blügel, Stefan and
Kovacik, Roman},
title = {{C}urie {T}emperature {P}rediction {M}odels of {M}agnetic
{H}eusler {A}lloys {U}sing {M}achine {L}earning {M}ethods
{B}ased on {F}irst-{P}rinciples {D}ata {F}rom {A}b-initio
{KKR}-{GF} {C}alculations},
reportid = {FZJ-2023-01453},
year = {2023},
note = {APS was licensed to archive the talk and use the
presentation as VOD.},
abstract = {Ordered and disordered magnetic Heusler alloys are an
important class of materials in science and applications.
Using Curie temperatures (Tc) of Heusler alloys calculated
by the Korringa-Kohn-Rostoker Green function (KKR-GF) method
and a subsequent Monte Carlo (MC) approach [1], we trained
and evaluated several machine learning models to predict Tc
based on atomic, magnetic, and structural properties. We
studied multiple descriptor selection methods to determine
the most meaningful physical quantities in the given phase
space.We compared the performance of regression and
classification models in order to predict the range of the
Tc of given compounds without performing the MC
calculations. Since the MC calculation takes about as many
computational resources as the ab-initio calculation, it
would be favorable to replace either step with a less
computational intensive method as e.g. machine learning. We
discuss the necessity to generate the magnetic ab-initio
results in order to make a quantitative prediction of the
Tc.This work can be seen as a small-scale case study in
which lightweight machine learning algorithms can add value
to existing ab-initio data and eventually replace costly
computational steps in layered calculation workflows in the
future.[1] R. Kovacik et al. (2022),
[10.24435/MATERIALSCLOUD:WW-PV]*This work was performed as
part of the Helmholtz School for Data Science in Life, Earth
and Energy (HDS-LEE) and received funding from the Helmholtz
Association of German Research Centres.},
month = {Mar},
date = {2023-03-06},
organization = {APS March Meeting, Las Vegas, Nevada
(USA), 6 Mar 2023 - 10 Mar 2023},
subtyp = {After Call},
cin = {IAS-1},
cid = {I:(DE-Juel1)IAS-1-20090406},
pnm = {5211 - Topological Matter (POF4-521) / 632 - Materials –
Quantum, Complex and Functional Materials (POF4-632) / HDS
LEE - Helmholtz School for Data Science in Life, Earth and
Energy (HDS LEE) (HDS-LEE-20190612)},
pid = {G:(DE-HGF)POF4-5211 / G:(DE-HGF)POF4-632 /
G:(DE-Juel1)HDS-LEE-20190612},
typ = {PUB:(DE-HGF)6},
url = {https://juser.fz-juelich.de/record/1005347},
}