English

Modeling an Augmented Lagrangian for Blackbox Constrained Optimization

Methodology 2015-03-04 v3 Computation

Abstract

Constrained blackbox optimization is a difficult problem, with most approaches coming from the mathematical programming literature. The statistical literature is sparse, especially in addressing problems with nontrivial constraints. This situation is unfortunate because statistical methods have many attractive properties: global scope, handling noisy objectives, sensitivity analysis, and so forth. To narrow that gap, we propose a combination of response surface modeling, expected improvement, and the augmented Lagrangian numerical optimization framework. This hybrid approach allows the statistical model to think globally and the augmented Lagrangian to act locally. We focus on problems where the constraints are the primary bottleneck, requiring expensive simulation to evaluate and substantial modeling effort to map out. In that context, our hybridization presents a simple yet effective solution that allows existing objective-oriented statistical approaches, like those based on Gaussian process surrogates and expected improvement heuristics, to be applied to the constrained setting with minor modification. This work is motivated by a challenging, real-data benchmark problem from hydrology where, even with a simple linear objective function, learning a nontrivial valid region complicates the search for a global minimum.

Keywords

Cite

@article{arxiv.1403.4890,
  title  = {Modeling an Augmented Lagrangian for Blackbox Constrained Optimization},
  author = {Robert B. Gramacy and Genetha A. Gray and Sebastien Le Digabel and Herbert K. H. Lee and Pritam Ranjan and Garth Wells and Stefan M. Wild},
  journal= {arXiv preprint arXiv:1403.4890},
  year   = {2015}
}

Comments

22 Pages, 2 additional supplementary, 5 figures

R2 v1 2026-06-22T03:30:08.607Z