一种用于随机多目标优化器性能可视化的总结-成果曲面绘图方法

Joshua D. Knowles
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引用次数: 147

摘要

当评估随机优化器的性能时,有时需要用在一定比例的样本运行中获得的质量来表示性能。例如,样本中位数质量是预期在50%的运行中达到的效果的最佳估计值,对于其他分位数也是如此。在多目标优化中,这个概念仍然适用,但运行的结果不是作为一个标量(即最佳解决方案的成本)来衡量,而是作为k维空间中的一个实现面(其中k是目标的数量)。在本文中,我们报告了一种算法,该算法可以方便地用于绘制任意数量的维度(尽管它特别适合于三个维度)的总结获得面。摘要达到面被定义为在n次运行的样本中精确地(独立地)在5次运行中达到的所有最紧密目标的集合,对于任意s/spl是/1。我们还讨论了该算法的计算复杂度,并给出了一些使用它的例子。该算法的C代码可从作者处获得。
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A summary-attainment-surface plotting method for visualizing the performance of stochastic multiobjective optimizers
When evaluating the performance of a stochastic optimizer it is sometimes desirable to express performance in terms of the quality attained in a certain fraction of sample runs. For example, the sample median quality is the best estimator of what one would expect to achieve in 50% of runs, and similarly for other quantiles. In multiobjective optimization, the notion still applies but the outcome of a run is measured not as a scalar (i.e. the cost of the best solution), but as an attainment surface in k-dimensional space (where k is the number of objectives). In this paper we report an algorithm that can be conveniently used to plot summary attainment surfaces in any number of dimensions (though it is particularly suited for three). A summary attainment surface is defined as the union of all tightest goals that have been attained (independently) in precisely s of the runs of a sample of n runs, for any s/spl isin/1..n, and for any k. We also discuss the computational complexity of the algorithm and give some examples of its use. C code for the algorithm is available from the author.
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