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Related Questions
- What are the key differences between Thompson Sampling and Upper Confidence Bound (UCB) acquisition functions in high-dimensional optimization?
- How does Thompson Sampling compare to Probability of Improvement (PI) acquisition function in terms of exploration-exploitation trade-off?
- Can you explain the relationship between Thompson Sampling and Expected Improvement (EI) acquisition function in high-dimensional optimization?
- What are the advantages and disadvantages of using Thompson Sampling in high-dimensional optimization compared to other acquisition functions?
- How does Thompson Sampling perform in scenarios with limited budget or computational resources?
- Can you discuss the impact of high-dimensional optimization on the performance of Thompson Sampling acquisition function?
- What are some common applications of Thompson Sampling in high-dimensional optimization, and how does it compare to other acquisition functions in these contexts?
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