Risk-averse Heteroscedastic Bayesian Optimization
–Neural Information Processing Systems
Many black-box optimization tasks arising in high-stakes applications require risk-averse decisions. The standard Bayesian optimization (BO) paradigm, however, optimizes the expected value only. We generalize BO to trade mean and input-dependent variance of the objective, both of which we assume to be unknown a priori.
Neural Information Processing Systems
Aug-15-2025, 22:43:13 GMT