资源论文high dimensional bayesian optimization using dropout

high dimensional bayesian optimization using dropout

2019-11-01 | |  55 |   43 |   0
Abstract Scaling Bayesian optimization to high dimensions is challenging task as the global optimization of high-dimensional acquisition function can be expensive and often infeasible. Existing methods depend either on limited “active” variables or the additive form of the objective function. We propose a new method for high-dimensional Bayesian optimization, that uses a dropout strategy to optimize only a subset of variables at each iteration. We derive theoretical bounds for the regret and show how it can inform the derivation of our algorithm. We demonstrate the efficacy of our algorithms for optimization on two benchmark functions and two realworld applications training cascade classifiers and optimizing alloy composition.

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