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Minimum spanning trees made easier via multi-objective optimization

机译:通过多目标优化使最少的生成树更容易

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Many real-world problems are multi-objective optimization problems and evolutionary algorithms are quite successful on such problems. Since the task is to compute or approximate the Pareto front, multi-objective optimization problems are considered as more difficult than single-objective problems. One should not forget that the fitness vector with respect to more than one objective contains more information that in principle can direct the search of evolutionary algorithms. Therefore, it is possible that a single-objective problem can be solved more efficiently via a generalized multi-objective model of the problem. That this is indeed the case is proved by investigating the computation of minimum spanning trees.
机译:许多真实问题是多目标优化问题,进化算法对这些问题非常成功。由于任务是计算或近似帕累托前线,多目标优化问题被认为比单目标问题更困难。一个人不应该忘记相对于一个以上目标的健身矢量包含更多信息,原则上可以指导进化算法的搜索。因此,可以通过问题的广义多目标模型更有效地解决单个客观问题。这实际上是通过调查最小跨越树的计算来证明了这种情况。

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