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Is "best-so-far" a good algorithmic performance metric?

Published: 12 July 2008 Publication History

Abstract

In evolutionary computation, experimental results are commonly analyzed using an algorithmic performance metric called best-so-far. While best-so-far can be a useful metric, its use is particularly susceptible to three pitfalls: a failure to establish a baseline for comparison, a failure to perform significance testing, and an insufficient sample size. The nature of best-so-far means that it is highly susceptible to these pitfalls. If these pitfalls are not avoided, the use of the best-so-far metric can lead to confusion at best and misleading results at worst. We detail how the use of multiple experimental runs, random search as a baseline, and significance testing can help researchers avoid these common pitfalls. Furthermore, we demonstrate how best-so-far can be an effective algorithmic performance metric if these guidelines are followed.

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Cited By

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  • (2014)Performance analysis of randomised search heuristics operating with a fixed budgetTheoretical Computer Science10.1016/j.tcs.2013.06.007545(39-58)Online publication date: 1-Aug-2014
  • (2013)A method to derive fixed budget results from expected optimisation timesProceedings of the 15th annual conference on Genetic and evolutionary computation10.1145/2463372.2463565(1581-1588)Online publication date: 6-Jul-2013
  • (2012)Achieving COSMOSProceedings of the 14th annual conference companion on Genetic and evolutionary computation10.1145/2330784.2330848(417-424)Online publication date: 7-Jul-2012

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cover image ACM Conferences
GECCO '08: Proceedings of the 10th annual conference on Genetic and evolutionary computation
July 2008
1814 pages
ISBN:9781605581309
DOI:10.1145/1389095
  • Conference Chair:
  • Conor Ryan,
  • Editor:
  • Maarten Keijzer
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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Publication History

Published: 12 July 2008

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Author Tags

  1. empirical study
  2. genetic algorithms
  3. machine learning
  4. performance analysis
  5. working principles of evolutionary computing

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Cited By

View all
  • (2014)Performance analysis of randomised search heuristics operating with a fixed budgetTheoretical Computer Science10.1016/j.tcs.2013.06.007545(39-58)Online publication date: 1-Aug-2014
  • (2013)A method to derive fixed budget results from expected optimisation timesProceedings of the 15th annual conference on Genetic and evolutionary computation10.1145/2463372.2463565(1581-1588)Online publication date: 6-Jul-2013
  • (2012)Achieving COSMOSProceedings of the 14th annual conference companion on Genetic and evolutionary computation10.1145/2330784.2330848(417-424)Online publication date: 7-Jul-2012

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