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Many Objective Problems Where Crossover is Provably Essential
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本文探讨了进化多目标优化理论,聚焦于交叉算子的作用,通过实例分析,展示了交叉算子在多目标优化中的加速效果,并揭示了其在不同参数设置下的性能差异。

arXiv:2412.18375v2 Announce Type: replace-cross Abstract: This article addresses theory in evolutionary many-objective optimization and focuses on the role of crossover operators. The advantages of using crossover are hardly understood and rigorous runtime analyses with crossover are lagging far behind its use in practice, specifically in the case of more than two objectives. We present two many-objective problems $RR{\text{RO}}$ and $uRR{\text{RO}}$ together with a theoretical runtime analysis of the GSEMO and the widely used NSGA-III algorithm to demonstrate that one point crossover on $RR{\text{RO}}$, as well as uniform crossover on $uRR{\text{RO}}$, can yield an exponential speedup in the runtime. In particular, when the number of objectives is constant, this algorithms can find the Pareto set of both problems in expected polynomial time when using crossover while without crossover they require exponential time to even find a single Pareto-optimal point. For both problems, we also demonstrate a significant performance gap in certain superconstant parameter regimes for the number of objectives. To the best of our knowledge, this is one of the first rigorous runtime analysis in many-objective optimization which demonstrates an exponential performance gap when using crossover for more than two objectives. Additionally, it is the first runtime analysis involving crossover in many-objective optimization where the number of objectives is not necessarily constant.

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多目标优化 交叉算子 算法分析 性能提升 进化算法
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