Sharp Bounds on the Runtime of the (1+1) EA via Drift Analysis and Analytic Combinatorial Tools

The expected running time of the classical (1+1) EA on the OneMax benchmark function has recently been determined by Hwang et al. (2018) up to additive errors of . The same approach proposed there also leads to a full asymptotic expansion with errors of the form for any . This precise result is obtained by matched asymptotics with rigorous error analysis (or by solving asymptotically the underlying recurrences via inductive approximation arguments), ideas radically different from well-established techniques for the running time analysis of evolutionary computation such as drift analysis. This paper revisits drift analysis for the (1+1) EA on OneMax and obtains that the expected running time , starting from one-bits, is determined by the sum of inverse drifts up to logarithmic error terms, more precisely \sum_{k=1}^{\lfloor n/2\rfloor}\frac{1}{\Delta(k)} - c_1\log n \le E(T) \le \sum_{k=1}^{\lfloor n/2\rfloor}\frac{1}{\Delta(k)} - c_2\log n, where is the drift (expected increase of the number of one-bits from the state of ones) and are explicitly computed constants. This improves the previous asymptotic error known for the sum of inverse drifts from to a logarithmic error and gives for the first time a non-asymptotic error bound. Using standard asymptotic techniques, the difference between and the sum of inverse drifts is found to be .
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