
It has been observed that some working principles of evolutionary algorithms, in particular, the influence of the parameters, cannot be understood from results on the asymptotic order of the runtime, but only from more precise results. In this work, we complement the emerging topic of precise runtime analysis with a first precise complexity theoretic result. Our vision is that the interplay between algorithm analysis and complexity theory becomes a fruitful tool also for analyses more precise than asymptotic orders of magnitude. As particular result, we prove that the unary unbiased black-box complexity of the OneMax benchmark function class is $n \ln(n) - cn \pm o(n)$ for a constant $c$ which is between $0.2539$ and $0.2665$. This runtime can be achieved with a simple (1+1)-type algorithm using a fitness-dependent mutation strength. When translated into the fixed-budget perspective, our algorithm finds solutions which are roughly 13\% closer to the optimum than those of the best previously known algorithms. To prove our results, we formulate several new versions of the variable drift theorems, which also might be of independent interest.
Thoroughly revised version
FOS: Computer and information sciences, theory of evolutionary computation, Evolutionary algorithms, genetic algorithms (computational aspects), [INFO.INFO-NE] Computer Science [cs]/Neural and Evolutionary Computing [cs.NE], parameter control, Computer Science - Neural and Evolutionary Computing, [INFO.INFO-NE]Computer Science [cs]/Neural and Evolutionary Computing [cs.NE], black-box complexity, 004, Analysis of algorithms, Neural and Evolutionary Computing (cs.NE), runtime analysis
FOS: Computer and information sciences, theory of evolutionary computation, Evolutionary algorithms, genetic algorithms (computational aspects), [INFO.INFO-NE] Computer Science [cs]/Neural and Evolutionary Computing [cs.NE], parameter control, Computer Science - Neural and Evolutionary Computing, [INFO.INFO-NE]Computer Science [cs]/Neural and Evolutionary Computing [cs.NE], black-box complexity, 004, Analysis of algorithms, Neural and Evolutionary Computing (cs.NE), runtime analysis
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