articleDec 13, 2005Closed access

A Restart CMA Evolution Strategy With Increasing Population Size

ETH Zurich

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Abstract

In this paper we introduce a restart-CMA-evolution strategy, where the population size is increased for each restart (IPOP). By increasing the population size the search characteristic becomes more global after each restart. The IPOP-CMA-ES is evaluated on the test suit of 25 functions designed for the special session on real-parameter optimization of CEC 2005. Its performance is compared to a local restart strategy with constant small population size. On unimodal functions the performance is similar. On multi-modal functions the local restart strategy significantly outperforms IPOP in 4 test cases whereas IPOP performs significantly better in 29 out of 60 tested cases.

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Authors

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Topics & keywords

Keywords
  • Population
  • Constant (computer programming)
  • Evolution strategy
  • Population size
  • Computer science
  • Session (web analytics)
  • Mathematical optimization
  • Mathematics
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