Theoretical studies on evolutionary algorithms have developed vigorously in recent years. Many such algorithms have theoretical guarantees in both running time and approximation ratio. Some approximation mechanism seems to be inherently embedded in many evolutionary algorithms. In this paper, we identify such a relation by proposing a unified analysis framework for a generalized simple multi-objective evolutionary algorithm (GSEMO), and apply it on a minimum weight general cover problem. For a wide range of problems (including the the minimum submodular cover problem in which the submodular function is real-valued, and the minimum connected dominating set problem for which the potential function is non-submodular), GSEMO yields asymptotically tight approximation ratios in expected polynomial time.
翻译:近年来,关于进化算法的理论研究得到了积极发展。许多这类算法在运行时间和近似率两方面都有理论保障。一些近似机制似乎嵌入了许多进化算法。在本文中,我们提出一个通用的简单多目标进化算法的统一分析框架(GSEMO),并将其应用于一个最小重量的一般覆盖问题。对于一系列广泛的问题(包括子模块功能被实际估值的最低子模块覆盖问题,以及潜在功能为非子模块的最小连接主导问题),GEMO在预期的多元时段中产生非瞬间紧凑的近似比率。