Improving the Expected Improvement Algorithm
About
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. This is the so-called best-arm identification problem, where the goal is to allocate measurement effort wisely to confidently identify the best arm using a small number of measurements. In this framework, one can show formally that EI is far from optimal. To overcome this shortcoming, we introduce a simple modification of the expected improvement algorithm. Surprisingly, this simple change results in an algorithm that is asymptotically optimal for Gaussian best-arm identification problems, and provably outperforms standard EI by an order of magnitude.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| e-good arm identification | Caption 853 | Probability of False Selection0.01 | 18 | |
| Best Arm Identification | Example 1 Synthetic | False Selection Probability7 | 10 | |
| Best Arm Identification | Example 2 Synthetic | False Selection Probability9 | 10 | |
| Best Arm Identification | Example 3 Synthetic | False Selection Rate2 | 10 | |
| Best Arm Identification | Dose-finding ACR50 | Probability of False Selection3 | 10 | |
| Best Arm Identification | Drug Review Dataset Selection | Probability of False Selection28 | 10 | |
| Best Arm Identification | New Yorker Cartoon Caption Contest Caption 854 | False Selection Probability0.06 | 10 |