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Parallelization of population-based multi-objective meta-heuristics: An empirical study

机译:基于人口的多目标元启发式算法的并行化:一项实证研究

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In single-objective optimization it is possible to find a global optimum, while in the multi-objective case no optimal solution is clearly defined, but several that simultaneously optimize all the objectives. However, the majority of this kind of problems cannot be solved exactly as they have very large and highly complex search spaces. Recently, meta-heuristic approaches have become important tools for solving multi-objective problems encountered in industry as well as in the theoretical field. Most of these meta-heuristics use a population of solutions, and hence the runtime increases when the population size grows. An interesting way to overcome this problem is to apply parallel processing. This paper analyzes the performance of several parallel paradigms in the context of population-based multi-objective meta-heuristics. In particular, we evaluate four alternative parallelizations of the Pareto simulated annealing algorithm, in terms of quality of the solutions, and speedup.
机译:在单目标优化中,可以找到一个全局最优值,而在多目标情况下,没有明确定义最优解,而是同时优化所有目标的最优解。但是,大多数此类问题都无法完全解决,因为它们具有非常大且非常复杂的搜索空间。近年来,元启发式方法已成为解决行业以及理论领域遇到的多目标问题的重要工具。这些元启发式方法大多数都使用解决方案,因此,随着总体规模的增长,运行时间会增加。解决此问题的一种有趣方法是应用并行处理。本文在基于人口的多目标元启发式方法的背景下分析了几种并行范例的性能。特别是,我们从解决方案的质量和加速方面评估了Pareto模拟退火算法的四个替代并行化。

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