Optimization of physical quantities in the autoencoder latent space

ORAL

Abstract

We propose a strategy for optimizing physical quantities based on exploring in the latent space of a variational autoencoder (VAE). We train a VAE model using various spin configurations formed on a two-dimensional chiral magnetic system. Three optimization algorithms are used to explore the latent space of the trained VAE. The first algorithm, the single-code modification algorithm, is designed for improving the local energetic stability of spin configurations to generate physically plausible spin states. The other two algorithms, the genetic algorithm and the stochastic algorithm, aim to optimize the global physical quantities, such as topological index, magnetization, energy, and directional correlation. The advantage of our method is that various optimization algorithms can be applied in the latent space containing the abstracted representation constructed by the trained VAE model. Our method based on latent space exploration is utilized for efficient physical quantity optimization.

* This research was supported by the National Research Foundation (NRF) of Korea funded by the Korean Government (NRF-2018R1D1A1B07047114, NRF-2020R1A5A1016518, NRF-2021R1C1C2093113, and NRF-2023R1A2C1006050); and by the Korea Institute of Science and Technology Institutional Program (2E31032 and 2E31033).

Publication: Park, S.M., Yoon, H.G., Lee, D.B. et al. Optimization of physical quantities in the autoencoder latent space. Sci Rep 12, 9003 (2022). https://doi.org/10.1038/s41598-022-13007-5

Presenters

  • Seong Min Park

    Kyung Hee University, KyungHee University

Authors

  • Seong Min Park

    Kyung Hee University, KyungHee University

  • Changyeon Won

    Kyung Hee University, KyungHee University

  • Han Gyu Yoon

    Kyung Hee university, KyungHee University, Kyung Hee University

  • Doo Bong Lee

    Kyung Hee University, KyungHee University

  • Jun Woo Choi

    Korea Institute of Science and Technology, Korea Institute of science and technology, KIST

  • Hee Young Kwon

    Korea Institute of Science and Technology, Korea Institute of science and technology