Level-based Analysis of Genetic Algorithms and other Search Processes

29 Jul 2014Dogan CorusDuc-Cuong DangAnton V. EremeevPer Kristian Lehre

Understanding how the time-complexity of evolutionary algorithms (EAs) depend on their parameter settings and characteristics of fitness landscapes is a fundamental problem in evolutionary computation. Most rigorous results were derived using a handful of key analytic techniques, including drift analysis... (read more)

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