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Exploiting run time distributions to compare sequential and parallel stochastic local search algorithms

机译:利用运行时分布来比较顺序和并行随机本地搜索算法

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Run time distributions or time-to-target plots are very useful tools to characterize the running times of stochastic algorithms for combinatorial optimization. We further explore run time distributions and describe a new tool to compare two algorithms based on stochastic local search. For the case where the running times of both algorithms fit exponential distributions, we derive a closed form index that gives the probability that one of them finds a solution at least as good as a given target value in a smaller computation time than the other. This result is extended to the case of general run time distributions and a numerical iterative procedure is described for the computation of the above probability value. Numerical examples illustrate the application of this tool in the comparison of different sequential and parallel algorithms for a number of distinct problems.
机译:运行时间分布或目标时间图是非常有用的工具,用于描述用于组合优化的随机算法的运行时间。我们将进一步研究运行时分布,并描述一种新工具,用于比较基于随机本地搜索的两种算法。对于两种算法的运行时间都符合指数分布的情况,我们得出一个封闭形式的索引,该索引给出了其中一种算法在比另一种算法更小的计算时间内找到至少与给定目标值一样好的解的可能性。该结果扩展到一般运行时间分布的情况,并描述了用于计算上述概率值的数字迭代过程。数值示例说明了该工具在比较许多不同问题的不同顺序算法和并行算法中的应用。

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