To handle different types of Many-Objective Optimization Problems (MaOPs), Many-Objective Evolutionary Algorithms (MaOEAs) need to simultaneously maintain convergence and population diversity in the high-dimensional objective space. In order to balance the relationship between diversity and convergence, we introduce a Kernel Matrix and probability model called Determinantal Point Processes (DPPs). Our Many-Objective Evolutionary Algorithm with Determinantal Point Processes (MaOEADPPs) is presented and compared with several state-of-the-art algorithms on various types of MaOPs \textcolor{blue}{with different numbers of objectives}. The experimental results demonstrate that MaOEADPPs is competitive.
翻译:为了处理多种目标优化问题的不同类型,许多目标进化算法(MaOEAs)需要同时在高维目标空间保持趋同和人口多样性。为了平衡多样性和趋同之间的关系,我们引入了一个内核矩阵和概率模型,称为“驱动点进程(DPPs DPPs ) 。我们展示了我们多种目标进化算法,并比较了多种类型最大目标的高级算法(MaOEADPs ) 。实验结果表明,MAOEADPs具有竞争力。