Improving the Expected Improvement Algorithm
Chao Qin, Diego Klabjan, Daniel Russo
–Neural Information Processing Systems
The expected improvement (EI) algorithm is a popular strategy for information collection in optimization under uncertainty. The algorithm is widely known to be too greedy, but nevertheless enjoys wide use due to its simplicity and ability to handle uncertainty and noise in a coherent decision theoretic framework. To provide rigorous insight into EI, we study its properties in a simple setting of Bayesian optimization where the domain consists of a finite grid of points.
Neural Information Processing Systems
Nov-21-2025, 12:26:41 GMT
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