AI RESEARCH
Automated Kernel Discovery Towards Understanding High-dimensional Bayesian Optimization
arXiv CS.LG
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ArXi:2605.20249v1 Announce Type: new Gaussian Process (GP) kernels are central to Bayesian optimization (BO), yet designing effective kernels for high-dimensional problems still relies on extensive manual engineering. Existing automated approaches struggle in high dimensions for two bottlenecks: their kernel search space is limited to additions and multiplications of base kernels, and LLM-based approaches require conditioning on raw observations, which becomes infeasible due to context-length limits and the difficulty of extracting meaningful patterns.