Drift Analysis and Evolutionary Algorithms Revisited

Abstract
One of the easiest randomized greedy optimization algorithms is the following evolutionary algorithm which aims at maximizing a boolean function . The algorithm starts with a random search point , and in each round it flips each bit of with probability independently at random, where is a fixed constant. The thus created offspring replaces if and only if . 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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