Eftimov et al., 2019 - Google Patents
A novel statistical approach for comparing meta-heuristic stochastic optimization algorithms according to the distribution of solutions in the search spaceEftimov et al., 2019
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- 5522773335716276993
- Author
- Eftimov T
- Korošec P
- Publication year
- Publication venue
- Information Sciences
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In this paper a novel statistical approach for comparing meta-heuristic stochastic optimization algorithms according to the distribution of the solutions in the search space is introduced, known as extended Deep Statistical Comparison. This approach is an extension …
- 238000009826 distribution 0 title abstract description 97
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