In the area of evolutionary computation the calculation of diverse sets of high-quality solutions to a given optimization problem has gained momentum in recent years under the term evolutionary diversity optimization. Theoretical insights into the working principles of baseline evolutionary algorithms for diversity optimization are still rare. In this paper we study the well-known Minimum Spanning Tree problem (MST) in the context of diversity optimization where population diversity is measured by the sum of pairwise edge overlaps. Theoretical results provide insights into the fitness landscape of the MST diversity optimization problem pointing out that even for a population of $\mu=2$ fitness plateaus (of constant length) can be reached, but nevertheless diverse sets can be calculated in polynomial time. We supplement our theoretical results with a series of experiments for the unconstrained and constraint case where all solutions need to fulfill a minimal quality threshold. Our results show that a simple $(\mu+1)$-EA can effectively compute a diversified population of spanning trees of high quality.
翻译:在进化计算领域,对特定优化问题的各种高质量解决方案的计算近年来在进化多样性优化这一术语下获得了势头。对多样化优化的基线演化算法工作原理的理论洞察仍然很少。在本文中,我们研究了在多样性优化背景下众所周知的最小树宽问题,在多样性优化背景下,人口多样性是通过对齐边缘的相近相加量测量的。理论结果提供了对MST多样性优化问题的健身景观的洞察力,指出即使人口为$\mu=2美元(不变长度),也能够达到健康高原(但可以多米时间计算出不同的组合。我们用一系列实验来补充我们的理论结果,在这种实验中,所有解决方案都需要达到最低质量阈值。我们的结果显示,简单的$(mu+1美元)-EA能够有效地计算出多样化的高质量树木覆盖人口。