2021
DOI: 10.1007/978-3-030-72904-2_10
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Stagnation Detection with Randomized Local Search

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Cited by 24 publications
(32 citation statements)
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“…Therefore, even for the best setting of the mutation rate, only the expected number of flipping bits equals the gap size while the actual number of flipping bits may be different. This has motivated Rajabi and Witt (2021) to consider the k-bit flip operator flipping a uniform random subset of k bits as known from randomized local search (RLS) (Doerr and Doerr, 2018) and to adjust k via stagnation detection. Compared to the SD-(1+1) EA, this allows a speed-up of ( ne m ) m / n m (up to lower-order terms) on functions with gap size m and a speed-up of up to roughly e = 2.718 .…”
Section: Introductionmentioning
confidence: 99%
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“…Therefore, even for the best setting of the mutation rate, only the expected number of flipping bits equals the gap size while the actual number of flipping bits may be different. This has motivated Rajabi and Witt (2021) to consider the k-bit flip operator flipping a uniform random subset of k bits as known from randomized local search (RLS) (Doerr and Doerr, 2018) and to adjust k via stagnation detection. Compared to the SD-(1+1) EA, this allows a speed-up of ( ne m ) m / n m (up to lower-order terms) on functions with gap size m and a speed-up of up to roughly e = 2.718 .…”
Section: Introductionmentioning
confidence: 99%
“…on unimodal functions while still being able to search globally. Rajabi and Witt (2021) emphasize that their RLS with self-adjusting k-bit flip operator resembles variable neighborhood search (Hansen and Mladenovic, 2018) but features less determinism by drawing the k bits to be flipped uniformly at random instead of searching the neighborhood in a fixed order. The random behavior still maintains many characteristics of the original RLS, including independent stochastic decisions which ease the runtime analysis.…”
Section: Introductionmentioning
confidence: 99%
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