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Two-Dimensional Drift Analysis: Optimizing Two Functions Simultaneously Can Be Hard

28 March 2022
D. Janett
Johannes Lengler
ArXiv (abs)PDFHTML
Abstract

In this paper we show how to use drift analysis in the case of two random variables X1,X2X_1, X_2X1​,X2​, when the drift is approximatively given by A⋅(X1,X2)TA\cdot (X_1,X_2)^TA⋅(X1​,X2​)T for a matrix AAA. The non-trivial case is that X1X_1X1​ and X2X_2X2​ impede each other's progress, and we give a full characterization of this case. As application, we develop and analyze a minimal example TwoLinear of a dynamic environment that can be hard. The environment consists of two linear function f1f_1f1​ and f2f_2f2​ with positive weights 111 and nnn, and in each generation selection is based on one of them at random. They only differ in the set of positions that have weight 111 and nnn. We show that the (1+1)(1+1)(1+1)-EA with mutation rate χ/n\chi/nχ/n is efficient for small χ\chiχ on TwoLinear, but does not find the shared optimum in polynomial time for large χ\chiχ.

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