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The Analysis of Evolutionary Algorithms on Sorting and Shortest Paths Problems

机译:排序和最短路径问题的进化算法分析

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The analysis of evolutionary algorithms is up to now limited to special classes of functions and fitness landscapes. E.g., it is not possible to characterize the set of TSP instances (or another NP-hard combinatorial optimization problem) which are solved by a generic evolutionary algorithm (EA) in an expected time bounded by some given polynomial. As a first step from artificial functions to typical problems from combinatorial optimization, we analyze simple EAs on well-known problems, namely sorting and shortest paths. Although it cannot be expected that EAs outperform the well-known problem specific algorithms on these simple problems, it is interesting to analyze how EAs work on these problems. The following results are obtained: – Sorting is the maximization of “sortedness” which is measured by one of several well-known measures of presortedness. The different measures of presortedness lead to fitness functions of quite different difficulty for EAs. – Shortest paths problems are hard for all types of EA, if they are considered as single-objective optimization problems, whereas they are easy as multi-objective optimization problems.
机译:到目前为止,对进化算法的分析仅限于特殊类别的功能和适用范围。例如,不可能刻画一组TSP实例(或另一个NP-hard组合优化问题),这些实例由通用进化算法(EA)在某个给定的多项式所限制的预期时间内解决。作为从人工功能到组合优化中的典型问题的第一步,我们针对已知问题(即排序和最短路径)分析简单的EA。尽管不能期望EA在这些简单问题上胜过众所周知的针对特定问题的算法,但是分析EA在这些问题上的工作方式很有意思。得到以下结果:–排序是“排序度”的最大化,它是通过几种众所周知的预排序度量之一来衡量的。预先分类的不同度量导致EA的适应度函数具有完全不同的难度。 –如果将最短路径问题视为单目标优化问题,则对于所有类型的EA来说都比较困难,而将其视为多目标优化问题则很容易。

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