Recreation of the periodic table with an unsupervised machine learning algorithm

Author:

Kusaba Minoru,Liu Chang,Koyama Yukinori,Terakura Kiyoyuki,Yoshida Ryo

Abstract

AbstractIn 1869, the first draft of the periodic table was published by Russian chemist Dmitri Mendeleev. In terms of data science, his achievement can be viewed as a successful example of feature embedding based on human cognition: chemical properties of all known elements at that time were compressed onto the two-dimensional grid system for a tabular display. In this study, we seek to answer the question of whether machine learning can reproduce or recreate the periodic table by using observed physicochemical properties of the elements. To achieve this goal, we developed a periodic table generator (PTG). The PTG is an unsupervised machine learning algorithm based on the generative topographic mapping, which can automate the translation of high-dimensional data into a tabular form with varying layouts on-demand. The PTG autonomously produced various arrangements of chemical symbols, which organized a two-dimensional array such as Mendeleev’s periodic table or three-dimensional spiral table according to the underlying periodicity in the given data. We further showed what the PTG learned from the element data and how the element features, such as melting point and electronegativity, are compressed to the lower-dimensional latent spaces.

Funder

Japan Science and Technology Agency

Japan Society for the Promotion of Science

Publisher

Springer Science and Business Media LLC

Subject

Multidisciplinary

Reference27 articles.

1. Mendeleev, D. On the relationship of the properties of the elements to their atomic weights. Zeitschrift für Chemie 12, 405–406 (1869).

2. Moseley, H. G. J. The high frequency spectra of the elements. Philos. Mag. 27, 1024 (1913).

3. Bohr, N. On the constitution of atoms and molecules. Philos. Mag. 26, 1 (1913).

4. Marchese, F. T. The chemical table: an open dialog between visualization and design. In 12th International Conference Information Visualisation. 75–81. https://doi.org/10.1109/IV.2008.79 (2008).

5. The internet database of periodic tables https://www.meta-synthesis.com/webbook/35_pt/pt_database.php.

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