First Steps Towards a Runtime Analysis When Starting With a Good Solution
June 22, 2020 ยท Declared Dead ยท ๐ Parallel Problem Solving from Nature
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Authors
Denis Antipov, Maxim Buzdalov, Benjamin Doerr
arXiv ID
2006.12161
Category
cs.NE: Neural & Evolutionary
Citations
22
Venue
Parallel Problem Solving from Nature
Last Checked
4 months ago
Abstract
The mathematical runtime analysis of evolutionary algorithms traditionally regards the time an algorithm needs to find a solution of a certain quality when initialized with a random population. In practical applications it may be possible to guess solutions that are better than random ones. We start a mathematical runtime analysis for such situations. We observe that different algorithms profit to a very different degree from a better initialization. We also show that the optimal parameterization of the algorithm can depend strongly on the quality of the initial solutions. To overcome this difficulty, self-adjusting and randomized heavy-tailed parameter choices can be profitable. Finally, we observe a larger gap between the performance of the best evolutionary algorithm we found and the corresponding black-box complexity. This could suggest that evolutionary algorithms better exploiting good initial solutions are still to be found. These first findings stem from analyzing the performance of the $(1+1)$ evolutionary algorithm and the static, self-adjusting, and heavy-tailed $(1 + (ฮป,ฮป))$ GA on the OneMax benchmark. We are optimistic that the question how to profit from good initial solutions is interesting beyond these first examples.
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