Local Entropy Search over Descent Sequences for Bayesian Optimization
PositiveArtificial Intelligence
- A new approach called local entropy search (LES) has been proposed for Bayesian optimization, focusing on refining design spaces through gradient descent. This method propagates posterior beliefs over objectives, resulting in a probability distribution that guides the selection of the next evaluation by maximizing mutual information. Empirical results indicate that LES demonstrates strong sample efficiency compared to existing optimization methods.
- The introduction of LES signifies a potential advancement in optimization techniques, particularly for complex design problems. By enhancing sample efficiency, this method could lead to more effective and practical solutions in various fields that rely on Bayesian optimization, ultimately improving decision-making processes in complex scenarios.
— via World Pulse Now AI Editorial System

