A parametric multi-objective Bayesian optimizer amortizes optimization across continuous task spaces by alternating generative solution sampling and acquisition-driven search to enable direct prediction for unseen problems without re-evaluations.
Parametric pareto set learning: Amortizing multi-objective optimization with parameters.IEEE Transactions on Evolutionary Computation, pages 1–1
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Amortized Multi-Objective Optimization Across Tasks with Generative Solution Modeling
A parametric multi-objective Bayesian optimizer amortizes optimization across continuous task spaces by alternating generative solution sampling and acquisition-driven search to enable direct prediction for unseen problems without re-evaluations.