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Density Ratio Estimation-based Bayesian Optimization with Semi-Supervised Learning

Main:9 Pages
18 Figures
Bibliography:3 Pages
2 Tables
Appendix:10 Pages
Abstract

Bayesian optimization has attracted huge attention from diverse research areas in science and engineering, since it is capable of finding a global optimum of an expensive-to-evaluate black-box function efficiently. In general, a probabilistic regression model, e.g., Gaussian processes and Bayesian neural networks, is widely used as a surrogate function to model an explicit distribution over function evaluations given an input to estimate and a training dataset. Beyond the probabilistic regression-based Bayesian optimization, density ratio estimation-based Bayesian optimization has been suggested in order to estimate a density ratio of the groups relatively close and relatively far to a global optimum. Developing this line of research further, a supervised classifier can be employed to estimate a class probability for the two groups instead of a density ratio. However, the supervised classifiers used in this strategy are prone to be overconfident for a global solution candidate. To solve this problem, we propose density ratio estimation-based Bayesian optimization with semi-supervised learning. Finally, we demonstrate the experimental results of our methods and several baseline methods in two distinct scenarios with unlabeled point sampling and a fixed-size pool.

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@article{kim2025_2305.15612,
  title={ Density Ratio Estimation-based Bayesian Optimization with Semi-Supervised Learning },
  author={ Jungtaek Kim },
  journal={arXiv preprint arXiv:2305.15612},
  year={ 2025 }
}
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