Science and Technology of Advanced Materials: Methods (Dec 2024)

Development of graphical user interface for design of experiments via Gaussian process regression and its case study

  • Yoshiki Hasukawa,
  • Mikael Kuwahara,
  • Lauren Takahashi,
  • Keisuke Takahashi

DOI
https://doi.org/10.1080/27660400.2023.2300252
Journal volume & issue
Vol. 4, no. 1

Abstract

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ABSTRACTBayesian optimization, coupled with Gaussian process regression and acquisition functions, has proven to be a powerful tool in the field of experimental design. Nevertheless, it demands a profound proficiency in software programming, machine learning, and statistical concepts. This steep learning curve presents a substantial obstacle when implementing Bayesian optimization for experimental design. In order to overcome this challenge, a user-friendly graphical interface for Gaussian process regression and acquisition functions is proposed. This accessible tool can be readily accessed via web browsers, courtesy of the established CADS platform (available at https://cads.eng.hokudai.ac.jp/). Thus, the interface offers to perform Bayesian optimization without any programming or any extensive prior knowledge about Bayesian optimization and machine learning.

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