Efficient Nonmyopic Bayesian Optimization via One-Shot Multi-Step Trees (2006.15779v1)
Abstract: Bayesian optimization is a sequential decision making framework for optimizing expensive-to-evaluate black-box functions. Computing a full lookahead policy amounts to solving a highly intractable stochastic dynamic program. Myopic approaches, such as expected improvement, are often adopted in practice, but they ignore the long-term impact of the immediate decision. Existing nonmyopic approaches are mostly heuristic and/or computationally expensive. In this paper, we provide the first efficient implementation of general multi-step lookahead Bayesian optimization, formulated as a sequence of nested optimization problems within a multi-step scenario tree. Instead of solving these problems in a nested way, we equivalently optimize all decision variables in the full tree jointly, in a one-shot'' fashion. Combining this with an efficient method for implementing multi-step Gaussian process
fantasization,'' we demonstrate that multi-step expected improvement is computationally tractable and exhibits performance superior to existing methods on a wide range of benchmarks.
- Shali Jiang (6 papers)
- Daniel R. Jiang (17 papers)
- Maximilian Balandat (27 papers)
- Brian Karrer (41 papers)
- Roman Garnett (38 papers)
- Jacob R. Gardner (39 papers)