Decomposition in derivative-free optimization

被引:0
|
作者
Kaiwen Ma
Nikolaos V. Sahinidis
Sreekanth Rajagopalan
Satyajith Amaran
Scott J Bury
机构
[1] Carnegie Mellon University,Department of Chemical Engineering
[2] Georgia Institute of Technology,H. Milton Stewart School of Industrial & Systems Engineering and School of Chemical & Biomolecular Engineering
[3] The Dow Chemical Company,undefined
[4] The Dow Chemical Company,undefined
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关键词
Derivative-free optimization; Superiorization; SNOBFIT;
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摘要
This paper proposes a novel decomposition framework for derivative-free optimization (DFO) algorithms. Our framework significantly extends the scope of current DFO solvers to larger-scale problems. We show that the proposed framework closely relates to the superiorization methodology that is traditionally used for improving the efficiency of feasibility-seeking algorithms for constrained optimization problems in a derivative-based setting. We analyze the convergence behavior of the framework in the context of global search algorithms. A practical implementation is developed and exemplified with the global model-based solver Stable Noisy Optimization by Branch and Fit (SNOBFIT) [36]. To investigate the decomposition framework’s performance, we conduct extensive computational studies on a collection of over 300 test problems of varying dimensions and complexity. We observe significant improvements in the quality of solutions for a large fraction of the test problems. Regardless of problem convexity and smoothness, decomposition leads to over 50% improvement in the objective function after 2500 function evaluations for over 90% of our test problems with more than 75 variables.
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页码:269 / 292
页数:23
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