ArXiv TLDR

Fast and Provably Accurate Sequential Designs using Hilbert Space Gaussian Processes

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2604.20414

Huanyan Zhu, Cheng Li

math.STstat.MEstat.ML

TLDR

This paper introduces a fast and provably accurate Hilbert space Gaussian process method for sequential design, enabling efficient IMSE evaluation.

Key contributions

  • Proposes a novel Hilbert space GP approximation for the IMSE acquisition function.
  • Uses a truncated eigenbasis representation for closed-form evaluation of IMSE integrals.
  • Establishes sharp non-asymptotic error bounds for approximation and acquisition function.
  • Achieves lower prediction error and faster computation than existing benchmarks.

Why it matters

Existing Gaussian process sequential designs struggle with IMSE implementation due to complex integrals. This paper provides a computationally efficient and accurate solution, making GP-based sequential design more practical and effective for expensive simulations.

Original Abstract

Gaussian processes are widely used for accurate emulation of unknown surfaces in sequential design of expensive simulation experiments. Integrated mean squared error (IMSE) is an effective acquisition function for sequential designs based on Gaussian processes. However, existing approaches struggle with its implementation because the required integrals often lack closed-form expressions for most kernel functions. We propose a novel and computationally efficient Hilbert space Gaussian process approximation for the IMSE acquisition function, where a truncated eigenbasis representation of the integral enables closed-form evaluation. We establish sharp global non-asymptotic bounds for both the approximation error of isotropic kernels and the resulting error in the acquisition function. In a series of numerical experiments with $γ$-stabilizing, the proposed method achieves substantially lower prediction error and reduced computation time compared to existing benchmarks. These results demonstrate that the proposed Hilbert space Gaussian process framework provides an accurate and computationally efficient approach for Gaussian process based sequential design.

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