Transition Constrained Bayesian Optimization via Markov Decision Processes
–Neural Information Processing Systems
Bayesian optimization is a methodology to optimize black-box functions. Traditionally, it focuses on the setting where you can arbitrarily query the search space. However, many real-life problems do not offer this flexibility; in particular, the search space of the next query may depend on previous ones. Example challenges arise in the physical sciences in the form of local movement constraints, required monotonicity in certain variables, and transitions influencing the accuracy of measurements.
Neural Information Processing Systems
May-31-2025, 17:42:53 GMT
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