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HypE: An Algorithm for Fast Hypervolume-Based Many-Objective Optimization

机译:HypE:一种基于超容量的快速多目标优化算法

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In the field of evolutionary multi-criterion optimization, the hypervolume indicator is the only single set quality measure that is known to be strictly monotonic with regard to Pareto dominance: whenever a Pareto set approximation entirely dominates another one, then the indicator value of the dominant set will also be better. This property is of high interest and relevance for problems involving a large number of objective functions. However, the high computational effort required for hypervolume calculation has so far prevented the full exploitation of this indicator's potential; current hypervolume-based search algorithms are limited to problems with only a few objectives. This paper addresses this issue and proposes a fast search algorithm that uses Monte Carlo simulation to approximate the exact hypervolume values. The main idea is not that the actual indicator values are important, but rather that the rankings of solutions induced by the hypervolume indicator. In detail, we present HypE, a hypervolume estimation algorithm for multi-objective optimization, by which the accuracy of the estimates and the available computing resources can be traded off; thereby, not only do many-objective problems become feasible with hypervolume-based search, but also the runtime can be flexibly adapted. Moreover, we show how the same principle can be used to statistically compare the outcomes of different multi-objective optimizers with respect to the hypervolume-so far, statistical testing has been restricted to scenarios with few objectives. The experimental results indicate that HypE is highly effective for many-objective problems in comparison to existing multi-objective evolutionary algorithms. HypE is available for download at http://www.tik.ee.ethz.ch/sop/download/ supplementary / hy pe /.
机译:在进化多准则优化领域中,超量指标是唯一关于帕累托优势严格单调的单一集合质量度量:每当帕累托集合近似完全主导另一个时,则占主导地位的指标值设置也会更好。对于涉及大量目标函数的问题,此属性具有很高的兴趣并与之相关。但是,到目前为止,超大量计算所需的大量计算工作仍无法充分利用该指标的潜力。当前基于超容量的搜索算法仅限于只有几个目标的问题。本文解决了这个问题,并提出了一种快速搜索算法,该算法使用蒙特卡罗模拟来近似精确的超体积值。主要思想不是实际指标值很重要,而是由超量指标引起的解决方案排名。详细地说,我们提出了HypE,一种用于多目标优化的超量估计算法,通过该算法可以权衡估计的准确性和可用的计算资源。因此,不仅可以在基于超量的搜索中实现多目标问题,而且可以灵活地调整运行时间。此外,我们展示了如何使用相同的原理对超量进行统计比较不同的多目标优化器的结果-到目前为止,统计测试仅限于目标很少的情况。实验结果表明,与现有的多目标进化算法相比,HypE在解决多目标问题方面非常有效。可以从http://www.tik.ee.ethz.ch/sop/download/Supplementary/hype/下载HypE。

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