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A framework for analyzing sub-optimal performance of local search algorithms

机译:分析本地搜索算法次优性能的框架

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摘要

This paper presents a framework for analyzing and comparing sub-optimal performance of local search algorithms for hard discrete optimization problems. The β-acceptable solution probability is introduced that captures how effectively an algorithm has performed to date and how effectively an algorithm can be expected to perform in the future. Using this probability, the necessary conditions for a local search algorithm to converge in probability to β-acceptable solutions are derived. To evaluate and compare the effectiveness of local search algorithms, two estimators for the expected number of iterations to visit a β-acceptable solution are obtained. Computational experiments are reported with simulated annealing and tabu search applied to four small traveling salesman problem instances, and the Lin-Kernighan-Helsgaun algorithm applied to eight medium to large traveling salesman problem instances (all with known optimal solutions), to illustrate the application of these estimators.
机译:本文提出了一个框架,用于分析和比较针对硬离散优化问题的局部搜索算法的次优性能。引入了β可接受的解决概率,该概率捕获了迄今为止算法的执行效率以及未来算法的预期执行效率。使用该概率,得出局部搜索算法将概率收敛到β可接受解的必要条件。为了评估和比较局部搜索算法的有效性,针对访问β可接受解的预期迭代次数,获得了两个估计器。报告了计算实验,其中模拟退火和禁忌搜索应用于四个小型旅行商问题实例,Lin-Kernighan-Helsgaun算法应用于八个中型到大型旅行商问题实例(均具有已知的最优解),以说明这些估计量。

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