Convergence Rates of Constrained Expected Improvement

Constrained Bayesian optimization (CBO) methods have seen significant success in black-box optimization with constraints, and one of the most commonly used CBO methods is the constrained expected improvement (CEI) algorithm. CEI is a natural extension of the expected improvement (EI) when constraints are incorporated. However, the theoretical convergence rate of CEI has not been established. In this work, we study the convergence rate of CEI by analyzing its simple regret upper bound. First, we show that when the objective function and constraint function are assumed to each lie in a reproducing kernel Hilbert space (RKHS), CEI achieves the convergence rates of for the commonly used squared exponential and Matérn kernels, respectively. Second, we show that when and are assumed to be sampled from Gaussian processes (GPs), CEI achieves the same convergence rates with a high probability. Numerical experiments are performed to validate the theoretical analysis.
View on arXiv@article{wang2025_2505.11323, title={ Convergence Rates of Constrained Expected Improvement }, author={ Haowei Wang and Jingyi Wang and Zhongxiang Dai and Nai-Yuan Chiang and Szu Hui Ng and Cosmin G. Petra }, journal={arXiv preprint arXiv:2505.11323}, year={ 2025 } }