Generative Adversarial Model-Based Optimization via Source Critic Regularization
–Neural Information Processing Systems
Offline model-based optimization seeks to optimize against a learned surrogate model without querying the true oracle objective function during optimization. Such tasks are commonly encountered in protein design, robotics, and clinical medicine where evaluating the oracle function is prohibitively expensive. However, inaccurate surrogate model predictions are frequently encountered along offline optimization trajectories.
Neural Information Processing Systems
Mar-20-2026, 11:22:08 GMT
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