贝叶斯优化
计算机科学
数学优化
先验与后验
最优化问题
趋同(经济学)
贝叶斯概率
约束(计算机辅助设计)
约束优化
人工智能
算法
数学
哲学
几何学
认识论
经济
经济增长
作者
Michael A. Gelbart,Jasper Snoek,Ryan P. Adams
出处
期刊:Cornell University - arXiv
日期:2014-01-01
被引量:265
标识
DOI:10.48550/arxiv.1403.5607
摘要
Recent work on Bayesian optimization has shown its effectiveness in global optimization of difficult black-box objective functions. Many real-world optimization problems of interest also have constraints which are unknown a priori. In this paper, we study Bayesian optimization for constrained problems in the general case that noise may be present in the constraint functions, and the objective and constraints may be evaluated independently. We provide motivating practical examples, and present a general framework to solve such problems. We demonstrate the effectiveness of our approach on optimizing the performance of online latent Dirichlet allocation subject to topic sparsity constraints, tuning a neural network given test-time memory constraints, and optimizing Hamiltonian Monte Carlo to achieve maximal effectiveness in a fixed time, subject to passing standard convergence diagnostics.
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