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首页> 外文期刊>Journal of Global Optimization >A model of anytime algorithm performance for bi-objective optimization
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A model of anytime algorithm performance for bi-objective optimization

机译:用于双目标优化的随时算法性能模型

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Anytime algorithms allow a practitioner to trade-off runtime for solution quality. This is of particular interest in multi-objective combinatorial optimization since it can be infeasible to identify all efficient solutions in a reasonable amount of time. We present a theoretical model that, under some mild assumptions, characterizes the "optimal" trade-off between runtime and solution quality, measured in terms of relative hypervolume, of anytime algorithms for bi-objective optimization. In particular, we assume that efficient solutions are collected sequentially such that the collected solution at each iteration maximizes the hypervolume indicator, and that the non-dominated set can be well approximated by a quadrant of a superellipse. We validate our model against an "optimal" model that has complete knowledge of the non-dominated set. The empirical results suggest that our theoretical model approximates the behavior of this optimal model quite well. We also analyze the anytime behavior of an epsilon-constraint algorithm, and show that our model can be used to guide the algorithm and improve its anytime behavior.
机译:随时算法允许从业者进行权衡运行时解决方案质量。这对多目标组合优化特别感兴趣,因为在合理的时间内识别所有有效的解决方案可能是不可行的。我们介绍了一个理论模型,在一些温和的假设下,表征了在用于双客观优化的任何时间算法的相对超型的运行时和解决方案质量之间的“最佳”折衷。特别地,我们假设依次收集有效的解决方案,使得每次迭代的收集的解决方案最大化超大指示器,并且非主导的组可以通过超细椭圆的象限近似地近似。我们针对具有完全了解非主导集合的“最佳”模型来验证我们的模型。经验结果表明,我们的理论模型近似于这种最佳模型的行为。我们还分析了epsilon-constraint算法的任何时候行为,并显示我们的模型可用于指导算法并提高其随时行为。

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