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Run-Time Analysis of the (1+1) Evolutionary Algorithm Optimizing Linear Functions Over a Finite Alphabet

机译:有限字母上优化线性函数的(1 + 1)进化算法的运行时分析

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We analyze the run-time of the (1 + 1) Evolutionary Algorithm optimizing an arbitrary linear function ƒ : {0,1,...,r}~n → R. If the mutation probability of the algorithm is p = c, then (1 + o(1))(e~c/c)rn log n + O(r~3n log log n) is an upper bound for the expected time needed to find the optimum. We also give a lower bound of (1 + o(1))(1/c)rn log n. Hence for constant c and all r slightly smaller than (log n)~(1/3) , our bounds deviate by only a constant factor, which is e(1 + o(1)) for the standard mutation probability of 1. The proof of the upper bound uses multiplicative adaptive drift analysis as developed in a series of recent papers. We cannot close the gap for larger values of r, but find indications that multiplicative drift is not the optimal analysis tool for this case.
机译:我们分析优化任意线性函数ƒ({0,1,...,r}〜n→R)的(1 + 1)进化算法的运行时间。如果算法的变异概率为p = c / n,那么(1 + o(1))(e〜c / c)rn log n + O(r〜3n log log n)是找到最优值所需的预期时间的上限。我们还给出(1 + o(1))(1 / c)rn log n的下界。因此,对于常数c和所有r略小于(log n)〜(1/3)的情况,我们的界限仅偏离常数因子,对于标准突变概率1 / n,它的范围为e(1 + o(1))。 。上限的证明使用了一系列最新论文中开发的乘法自适应漂移分析。对于较大的r值,我们无法弥合差距,但有迹象表明,乘法漂移并不是这种情况下的最佳分析工具。

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