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Computing single source shortest paths using single-objective fitness

机译:计算单源最短路径使用单目标健身

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Runtime analysis of evolutionary algorithms has become an important part in the theoretical analysis of randomized search heuristics. The first combinatorial problem where rigorous runtime results have been achieved is the well-known single source shortest path (SSSP) problem. Scharnow, Tinnefeld and Wegener [PPSN 2002, J. Math. Model. Alg. 2004] proposed a multi-objective approach which solves the problem in expected polynomial time. They also suggest a related single-objective fitness function. However, it was left open whether this does solve the problem efficiently, and, in a broader context, whether multi-objective fitness functions for problems like the SSSP yield more efficient evolutionary algorithms. In this paper, we show that the single objective approach yields an efficient (1+1) EA with runtime bounds very close to those of the multi-objective approach.
机译:进化算法的运行时间分析已成为随机搜索启发式的理论分析的重要组成部分。实现了严格的运行时结果的第一个组合问题是众所周知的单一源最短路径(SSSP)问题。 Scharnow,Tinnefeld和Wegener [PPSN 2002,J. Math。模型。阿尔。 2004]提出了一种多目标方法,解决了预期多项式时间的问题。他们还建议了一个相关的单目标健身功能。然而,它是打开的,无论这确实有效地解决了问题,并且在更广泛的上下文中,是否为SSSP产生的多目标健身功能是SSSP产生更有效的进化算法。在本文中,我们表明,单个客观方法产生高效(1 + 1)EA,运行时界限非常接近多目标方法。

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