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Solving optimization problems with high conditioning by means of online whitening

Published: 13 July 2019 Publication History

Abstract

Real-world optimization problems often have expensive objective functions in terms of cost and time. It is desirable to find near-optimal solutions with very few function evaluations. Surrogate-assisted optimizers tend to reduce the required number of function evaluations by replacing the real function with an efficient mathematical model built on few evaluated points. Problems with a high condition number are a challenge for many surrogate-assisted optimizers including SACOBRA. To address such problems we propose a new online whitening operating in the black-box optimization paradigm. We show on a set of high-conditioning functions that online whitening tackles SACOBRA's early stagnation issue and reduces the optimization error by a factor between 10 to 1012 as compared to the plain SACOBRA, though it imposes many extra function evaluations. Covariance matrix adaptation evolution strategy (CMA-ES) has for very high numbers of function evaluations even lower errors, whereas SACOBRA performs better in the expensive setting (≤ 103 function evaluations). If we count all parallelizable function evaluations (population evaluation in CMA-ES, online whitening in our approach) as one iteration, then both algorithms have comparable strength even on the long run. This holds for problems with dimension D ≤ 20.

References

[1]
Samineh Bagheri, Wolfgang Konen, and Thomas Bäck. 2019. SACOBRA with Online Whitening for Solving Optimization Problems with High Conditioning. Technical Report. TH Köln --- Univeristy of Applied Sciences, http://www.gm.fh-koeln.de/ciopwebpub/Bagh19a.d
[2]
Samineh Bagheri, Wolfgang Konen, Michael Emmerich, and Thomas Bäck. 2017. Self-adjusting parameter control for surrogate-assisted constrained optimization under limited budgets. Applied Soft Computing 61 (2017), 377 -- 393.
[3]
Lukáš Bajer, Zbyněk Pitra, and Martin Holeňa. 2015. Benchmarking Gaussian Processes and Random Forests Surrogate Models on the BBOB Noiseless Testbed. In Proc. Genetic and Evolutionary Computation Conference GECCO'15. ACM, New York, 1143--1150.
[4]
Steffen Finck, Nikolaus Hansen, Raymond Ros, and Anne Auger. 2009. Real-Parameter Black-Box Optimization Benchmarking 2009: Presentation of the Noiseless Functions. Technical Report 2009/20. Research Center PPE.
[5]
Ilya Loshchilov, Marc Schoenauer, and Michèle Sebag. 2012. Self-Adaptive Surrogate-Assisted Covariance Matrix Adaptation Evolution Strategy. CoRR abs/1204.2356 (2012). arXiv:1204.2356
[6]
Babatunde A Sawyerr, Aderemi O Adewumi, and M Montaz Ali. 2015. Benchmarking rcgau on the noiseless bbob testbed. The Scientific World Journal 2015 (2015).
[7]
Andrew M Sutton, Monte Lunacek, and L Darrell Whitley. 2007. Differential evolution and non-separability: using selective pressure to focus search. In Proceedings of the 9th annual conference on Genetic and evolutionary computation. ACM, 1428--1435.

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  1. Solving optimization problems with high conditioning by means of online whitening

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      cover image ACM Conferences
      GECCO '19: Proceedings of the Genetic and Evolutionary Computation Conference Companion
      July 2019
      2161 pages
      ISBN:9781450367486
      DOI:10.1145/3319619
      Permission to make digital or hard copies of all or part of this work for personal or classroom use is granted without fee provided that copies are not made or distributed for profit or commercial advantage and that copies bear this notice and the full citation on the first page. Copyrights for components of this work owned by others than ACM must be honored. Abstracting with credit is permitted. To copy otherwise, or republish, to post on servers or to redistribute to lists, requires prior specific permission and/or a fee. Request permissions from [email protected]

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      Published: 13 July 2019

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      Author Tags

      1. high condition number
      2. online whitening
      3. surrogate models

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      GECCO '19
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      GECCO '19: Genetic and Evolutionary Computation Conference
      July 13 - 17, 2019
      Prague, Czech Republic

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