可视化种群动态以检验算法性能

Visualizing Population Dynamics to Examine Algorithm Performance

IEEE Transactions on Evolutionary Computation · 2022
被引 13
ABS 4

中文导读

提出用地标多维缩放(LMDS)可视化进化算法中种群的演化过程,相比传统MDS节省超99%的时间和内存,能直观揭示算法性能,辅助决策者调整参数。

Abstract

This work assesses the efficacy of evolutionary algorithms (EAs) using an intuitive multidimensional scaling (MDS) visualization of the evolution of a population. We propose the use of landmark MDS (LMDS) to overcome computational challenges inherent to visualizing many-objective and complex problems with MDS. For the benchmark problems we tested, LMDS is akin to MDS visually, whilst requiring less than 1% of the time and memory necessary to produce an MDS visualization of the same objective space solutions, leading to the possibility of online visualizations for multi- and many-objective optimization evaluation. Using multi- and many-objective problems from the DTLZ and WFG benchmark test suites, we analyze how Landmark MDS visualizations can offer far greater insight into algorithm performance than using traditional algorithm performance metrics such as hypervolume alone, and can be used to complement explicit performance metrics. Ultimately, this visualization allows the visual identification of problem features and assists the decision maker in making intuitive recommendations for algorithm parameters/operators for creating and testing better EAs to solve multi- and many-objective problems.

进化算法数据可视化多目标优化多维缩放