揭示交通工程算法的最优性差距

Huan Liu
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引用次数: 0

摘要

为了充分利用现有网络资源,减少资本支出,流量工程(Traffic Engineering, TE)是非常重要和必要的。鉴于其重要性,文献中提出了许多算法。不幸的是,仍然没有一个一致的方法来评估这些算法。更糟糕的是,交通工程问题的一些变体已知是np困难的。因此,给定一个特定的TE问题,一般来说,不可能知道最优解;因此,很难评估一个特定的启发式算法的执行情况。即使可以使用几种启发式算法来相互验证,这些算法的最佳解决方案仍然可能与最优解决方案相差甚远。我们提出了一种新的方法来评估TE算法。在这种方法中,我们构建具有已知最优解的TE问题,然后使用这些TE问题实例来测试TE算法的性能。我们发现一些TE算法表现不佳,并且随着问题规模的增大,结果进一步偏离最优。我们的结果表明,算法有很大的改进空间,需要进一步的研究。尽管我们只在交通工程算法的背景下展示了该方法的强大功能,但该方法是足够通用的,它也可以应用于许多其他领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Revealing the optimality gap for Traffic Engineering algorithms
Traffic Engineering (TE) is important and necessary in order to fully utilize the existing network resources and reduce capital expenditure. Given its importance, many algorithms have been proposed in the literature. Unfortunately, there is still not a consistent methodology to evaluate these algorithms. Worse yet, some variants of the traffic engineering problem are known to be NP-hard. Thus, given a particular TE problem, in general, it is not possible to know the optimal solution; hence, it is difficult to assess how a particular heuristic algorithm performs. Even though several heuristic algorithms could be used to validate each other, the best solution from these algorithms could still be very far away from the optimal solution. We propose a novel methodology to evaluate TE algorithms. In this methodology, we construct TE problems with known optimal solutions and we then use these TE problem instances to test the performance of TE algorithms. We found that some TE algorithms perform poorly, and the result deviates from the optimum further as the problem size gets bigger. Our results suggest that there is large room for algorithm improvements and further research is required. Even though we only demonstrate the power of the methodology in the context of traffic engineering algorithms, the methodology is general enough that it could be applied in many other areas as well.
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