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Drift Analysis and Evolutionary Algorithms Revisited

10 August 2016
Johannes Lengler
Angelika Steger
ArXiv (abs)PDFHTML
Abstract

One of the easiest randomized greedy optimization algorithms is the following evolutionary algorithm which aims at maximizing a boolean {function} f:{0,1}n→Rf:\{0,1\}^n \to {\mathbb R}f:{0,1}n→R. The algorithm starts with a random search point ξ∈{0,1}n\xi \in \{0,1\}^nξ∈{0,1}n, and in each round it flips each bit of ξ\xiξ with probability c/nc/nc/n independently at random, where c>0c>0c>0 is a fixed constant. The thus created {offspring} ξ′\xi'ξ′ replaces ξ\xiξ if and only if f(ξ′)>f(ξ)f(\xi') > f(\xi)f(ξ′)>f(ξ). The analysis of the runtime of this simple algorithm on monotone and on linear functions turned out to be highly non-trivial. In this paper we review known results and provide new and self-contained proofs of partly stronger results.

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