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Multi-Objective Bayesian Optimization over High-Dimensional Search Spaces (2109.10964v4)

Published 22 Sep 2021 in cs.LG, cs.AI, math.OC, and stat.ML

Abstract: Many real world scientific and industrial applications require optimizing multiple competing black-box objectives. When the objectives are expensive-to-evaluate, multi-objective Bayesian optimization (BO) is a popular approach because of its high sample efficiency. However, even with recent methodological advances, most existing multi-objective BO methods perform poorly on search spaces with more than a few dozen parameters and rely on global surrogate models that scale cubically with the number of observations. In this work we propose MORBO, a scalable method for multi-objective BO over high-dimensional search spaces. MORBO identifies diverse globally optimal solutions by performing BO in multiple local regions of the design space in parallel using a coordinated strategy. We show that MORBO significantly advances the state-of-the-art in sample efficiency for several high-dimensional synthetic problems and real world applications, including an optical display design problem and a vehicle design problem with 146 and 222 parameters, respectively. On these problems, where existing BO algorithms fail to scale and perform well, MORBO provides practitioners with order-of-magnitude improvements in sample efficiency over the current approach.

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Authors (4)
  1. Samuel Daulton (14 papers)
  2. David Eriksson (22 papers)
  3. Maximilian Balandat (27 papers)
  4. Eytan Bakshy (38 papers)
Citations (85)