AI Discovering a Coordinate System of Chemical Elements: Dual Representation by Variational Autoencoders
Alex Glushkovsky

TL;DR
This paper uses a variational autoencoder to learn a 2D latent space representation of chemical elements based on electron configurations, revealing periodic patterns, symmetries, and outliers aligned with chemical properties and quantum rules.
Contribution
It introduces a novel dual autoencoder approach to uncover meaningful chemical element patterns and symmetries in an unsupervised manner using electron configuration data.
Findings
Disentangles elements by periods, blocks, groups, and types.
Identifies known Madelung's rule violations as outliers.
Latent space order matches Madelung's rule sequence.
Abstract
The periodic table is a fundamental representation of chemical elements that plays essential theoretical and practical roles. The research article discusses the experiences of unsupervised training of neural networks to represent elements on the 2D latent space based on their electron configurations. To emphasize chemical properties of the elements, the original data of electron configurations has been realigned towards valence orbitals. Recognizing seven shells and four subshells, the input data has been arranged as 7x4 images. Latent space representation has been performed using a convolutional beta variational autoencoder (beta-VAE). Despite discrete and sparse input data, the beta-VAE disentangles elements of different periods, blocks, groups, and types. The unsupervised representation of elements on the latent space reveals pairwise symmetries of periods and elements related to the…
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Taxonomy
TopicsMachine Learning in Materials Science · Advanced Data Processing Techniques · Geochemistry and Geologic Mapping
MethodsBeta-VAE · Solana Customer Service Number +1-833-534-1729
