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  5. Topological Descriptors for the Electron Density of Inorganic Solids

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Article
en
2025

Topological Descriptors for the Electron Density of Inorganic Solids

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en
2025
Vol 7 (6)
Vol. 7
DOI: 10.1021/acsmaterialslett.5c00390

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Nathan J Szymanski
Nathan J Szymanski

University of California, Berkeley

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Nathan J Szymanski
Alexander Smith
Pródromos Daoutidis
+1 more

Abstract

Descriptors play an important role in data-driven materials design. While most descriptors of crystalline materials emphasize structure and composition, they often neglect the electron density - a complex yet fundamental quantity that governs material properties. Here, we introduce Betti curves as topological descriptors that compress electron densities into compact representations. Derived from persistent homology, Betti curves capture bonding characteristics by encoding components, cycles, and voids across varied electron density thresholds. Machine learning models trained on Betti curves outperform those trained on raw electron densities by an average of 33 percentage points in classifying structure prototypes, predicting thermodynamic stability, and distinguishing metals from non-metals. Shannon entropy calculations reveal that Betti curves retain comparable information content to electron density while requiring two orders of magnitude less data. By combining expressive power with compact representation, Betti curves highlight the potential of topological data analysis to advance materials design.

How to cite this publication

Nathan J Szymanski, Alexander Smith, Pródromos Daoutidis, Christopher J. Bartel (2025). Topological Descriptors for the Electron Density of Inorganic Solids. , 7(6), DOI: https://doi.org/10.1021/acsmaterialslett.5c00390.

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Publication Details

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Article

Year

2025

Authors

4

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0

Total Files

0

Language

en

DOI

https://doi.org/10.1021/acsmaterialslett.5c00390

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