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Bayesian Optimization over Bounded Domains with the Beta Product Kernel

Bayesian Optimization over Bounded Domains with the Beta Product Kernel

来源:Arxiv_logoArxiv
英文摘要

Bayesian optimization with Gaussian processes (GP) is commonly used to optimize black-box functions. The Matérn and the Radial Basis Function (RBF) covariance functions are used frequently, but they do not make any assumptions about the domain of the function, which may limit their applicability in bounded domains. To address the limitation, we introduce the Beta kernel, a non-stationary kernel induced by a product of Beta distribution density functions. Such a formulation allows our kernel to naturally model functions on bounded domains. We present statistical evidence supporting the hypothesis that the kernel exhibits an exponential eigendecay rate, based on empirical analyses of its spectral properties across different settings. Our experimental results demonstrate the robustness of the Beta kernel in modeling functions with optima located near the faces or vertices of the unit hypercube. The experiments show that our kernel consistently outperforms a wide range of kernels, including the well-known Matérn and RBF, in different problems, including synthetic function optimization and the compression of vision and language models.

Huy Hoang Nguyen、Han Zhou、Matthew B. Blaschko、Aleksei Tiulpin

计算技术、计算机技术

Huy Hoang Nguyen,Han Zhou,Matthew B. Blaschko,Aleksei Tiulpin.Bayesian Optimization over Bounded Domains with the Beta Product Kernel[EB/OL].(2025-06-19)[2025-07-16].https://arxiv.org/abs/2506.16316.点此复制

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