A Computational Comparison of Three Nature-Inspired, Population-Based Metaheuristic Algorithms for Modelling-to-Generate Alternatives

J. Yeomans
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Abstract

In “real life” decision-making situations, inevitably, there are numerous unmodelled components, not incorporated into the underlying mathematical programming models, that hold substantial influence on the overall acceptability of the solutions calculated. Under such circumstances, it is frequently beneficial to produce a set of dissimilar–yet “good”–alternatives that contribute very different perspectives to the original problems. The approach for creating maximally different solutions is known as modelling-to-generate alternatives (MGA). Recently, a data structure that permits MGA using any population-based solution procedure has been formulated that can efficiently construct sets of maximally different solution alternatives. This new approach permits the production of an overall best solution together with n locally optimal, maximally different alternatives in a single computational run. The efficacy of this novel computational approach is tested on four benchmark optimization problems.
三种自然启发的、基于人口的元启发式算法的计算比较,用于建模生成替代方案
在“现实生活”的决策情况中,不可避免地存在许多未建模的组件,这些组件未被纳入基础数学规划模型,它们对所计算的解决方案的总体可接受性具有重大影响。在这种情况下,产生一组不同但“好”的替代方案通常是有益的,这些替代方案为原始问题提供了非常不同的视角。创建最大程度不同的解决方案的方法被称为建模生成备选方案(MGA)。最近,一种允许MGA使用任何基于种群的解过程的数据结构已经形成,可以有效地构建最大不同的解备选集。这种新方法允许在一次计算运行中产生一个整体最佳解决方案以及n个局部最优、最大不同的替代方案。在四个基准优化问题上验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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