Two Decades Of Evolutionary Multi-Criterion Optimization: A Glance Back And A Look Ahead

E. Zitzler
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引用次数: 5

Abstract

Summary form only given. The field of evolutionary multi-criterion optimization has undergone a tremendous growth since the first approaches have been proposed in the mid-1980's. Due to their population-based structure, evolutionary algorithms are inherently suited to optimization problems where the goal is to find a set of solutions. For this reason and with the advent of sufficient computing resources, they have become a valuable tool to approximate the set of Pareto-optimal solutions for highly complex applications in various domains. Several trends could be observed during the last two decades. Concerning the design of EMO algorithms, the early methods used component-wise selection mechanisms, while meanwhile dominance-based fitness assignment schemes combined with diversity preservation techniques and elitist environmental selection are most popular. A further paradigm shift has been initiated where the search is based on set quality measures. A second trend is related to the performance assessment of EMO methods. The first studies were proof-of-principle results and mainly using visual comparisons to evaluate simulation results. Later, quantitative measures were introduced and a variety of approaches for assessing the quality of sets have been proposed. The issue of statistical testing in the context of random sets has gained only little attention until 2000, but has become more and more standard meanwhile. Finally, a third trend addresses theoretical aspects of EMO. Within the last four years, several studies have been presented run-time analyses of simple model algorithms for various types of problems; these complement the many empirical studies published in the second decade of EMO history. Despite the many advances that have been achieved during the last 20 years, there are several challenges ahead. The integration of the search process into the decision making process has been discussed for many years, but so far only little research has been devoted to real interactive EMO methods. In the light of this question, especially problems with a large number of objectives are of particular interest. But many other topics can be mentioned in this context: uncertainty, robustness, and integration of exact optimization methods, to name only a few.
二十年的进化多准则优化:回顾与展望
只提供摘要形式。自20世纪80年代中期第一批方法被提出以来,进化多准则优化领域经历了巨大的发展。由于其基于群体的结构,进化算法天生就适合于以找到一组解决方案为目标的优化问题。由于这个原因,随着足够的计算资源的出现,它们已经成为在各种领域的高度复杂应用中近似帕累托最优解集的有价值的工具。在过去二十年中可以观察到几个趋势。在EMO算法的设计中,早期的方法采用了组件明智的选择机制,而结合多样性保护技术和精英环境选择的基于优势的适应度分配方案是最受欢迎的。进一步的范式转变已经开始,搜索是基于设定的质量措施。第二个趋势与EMO方法的绩效评估有关。第一个研究是原理验证结果,主要使用视觉比较来评估模拟结果。随后,引入了定量度量,并提出了各种评估集合质量的方法。随机集背景下的统计检验问题直到2000年才受到重视,但与此同时也变得越来越规范。最后,第三个趋势涉及EMO的理论方面。在过去的四年里,一些研究已经提出了简单模型算法的运行时分析,用于各种类型的问题;这些补充了在EMO历史的第二个十年中发表的许多实证研究。尽管在过去20年中取得了许多进展,但未来仍有一些挑战。将搜索过程整合到决策过程中已经讨论了很多年,但到目前为止,真正的交互式EMO方法的研究还很少。鉴于这个问题,特别是具有大量目标的问题特别令人感兴趣。但在此背景下还可以提到许多其他主题:不确定性、鲁棒性和精确优化方法的集成,仅举几例。
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