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A Fast Hypervolume Driven Selection Mechanism for Many-Objective Optimisation Problems.

机译:用于多目标优化问题的快速超容量驱动选择机制。

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摘要

Solutions to real-world problems often require the simultaneous optimisation of multiple conflicting objectives. In the presence of four or more objectives, the problem is referred to as a “many-objective optimisation problem”. A problem of this category introduces many challenges, one of which is the effective and efficient selection of optimal solutions.\udThe hypervolume indicator (or s-metric), i.e. the size of dominated objective space, is an effective selection criterion for many-objective optimisation. The indicator is used to measure the quality of a nondominated set, and can be used to sort solutions for selection as part of the contributing hypervolume indicator. However, hypervolume based selection methods can have a very high, if not infeasible, computational cost.\udThe present study proposes a novel hypervolume driven selection mechanism for many-objective problems, whilst maintaining a feasible computational cost. This approach, named the Hypervolume Adaptive Grid Algorithm (HAGA), uses two-phases (narrow and broad) to prevent population-wide calculation of the contributing hypervolume indicator. Instead, HAGA only calculates the contributing hypervolume indicator for grid populations, i.e. for a few solutions, which are close in proximity (in the objective space) to a candidate solution when in competition for survival. The result is a trade-off between complete accuracy in selecting the fittest individuals in regards to hypervolume quality, and a feasible computational time in many-objective space. The real-world efficiency of the proposed selection mechanism is demonstrated within the optimisation of a classifier for concealed weapon detection.
机译:解决现实问题通常需要同时优化多个相互矛盾的目标。在存在四个或更多目标的情况下,该问题称为“多目标优化问题”。这一类的问题带来了许多挑战,其中之一是对有效解的有效选择。\ ud超体积指标(或s-metric),即支配目标空间的大小,是多目标的有效选择标准。优化。该指标用于衡量非支配集合的质量,并且可以用于对解决方案进行排序以供选择,以作为贡献超量指标的一部分。但是,基于超容量的选择方法可能具有非常高的计算成本,即使不是不可行的。\ ud本研究提出了一种针对多目标问题的新型超容量驱动的选择机制,同时保持了可行的计算成本。这种称为“超量自适应网格算法”(HAGA)的方法使用两个阶段(狭窄和较宽)来防止整个人口范围内对超量指示指标的计算。取而代之的是,HAGA仅计算网格人口的贡献性超量指标,即计算一些解决方案,这些解决方案在生存竞争中与候选解决方案非常接近(在目标空间中)。结果是在选择超适量个体方面的完全准确性与在多目标空间中可行的计算时间之间进行权衡。拟议的选择机制的真实效率在隐藏武器检测的分类器优化中得到了证明。

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  • 作者

    Rostami, Shahin; Neri, F.;

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  • 年度 2017
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  • 原文格式 PDF
  • 正文语种 en
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