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Unbiased Black-Box Complexities of Jump Functions---How to Cross Large Plateaus

30 March 2014
Benjamin Doerr
Carola Doerr
Timo Kotzing
ArXiv (abs)PDFHTML
Abstract

We analyze the unbiased black-box complexity of jump functions with large jump sizes. Among other results, we show that when the jump size is (1/2−ε)n(1/2 - \varepsilon)n(1/2−ε)n, that is, only a small constant fraction of the fitness values is visible, then the unbiased black-box complexities for arities 333 and higher are of the same order as those for the simple OneMax function. Even for the extreme jump function, in which all but the two fitness values n/2n/2n/2 and nnn are blanked out, polynomial-time mutation-based (i.e., unary unbiased) black-box optimization algorithms exist. This is quite surprising given that for the extreme jump function almost the whole search space (all but a Θ(n−1/2)\Theta(n^{-1/2})Θ(n−1/2) fraction) is a plateau of constant fitness. To prove these results, we introduce new tools for the analysis of unbiased black-box complexities, for example, selecting the new parent individual not by comparing the fitnesses of the competing search points, but also by taking into account the (empirical) expected fitnesses of their offspring.

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