Lin Jiabin, Liu Hai-Lin, Tan Kay Chen, Gu Fangqing
IEEE Trans Cybern. 2021 Jun;51(6):3238-3248. doi: 10.1109/TCYB.2020.2969025. Epub 2021 May 18.
Multiobjective multitasking optimization (MTO), which is an emerging research topic in the field of evolutionary computation, was recently proposed. MTO aims to solve related multiobjective optimization problems at the same time via evolutionary algorithms. The key to MTO is the knowledge transfer based on sharing solutions across tasks. Notably, positive knowledge transfer has been shown to facilitate superior performance characteristics. However, how to find more valuable transferred solutions for the positive transfer has been scarcely explored. Keeping this in mind, we propose a new algorithm to solve MTO problems. In this article, if a transferred solution is nondominated in its target task, the transfer is positive transfer. Furthermore, neighbors of this positive-transfer solution will be selected as the transferred solutions in the next generation, since they are more likely to achieve the positive transfer. Numerical studies have been conducted on benchmark problems of MTO to verify the effectiveness of the proposed approach. Experimental results indicate that our proposed framework achieves competitive results compared with the state-of-the-art MTO frameworks.
多目标多任务优化(MTO)是进化计算领域中一个新兴的研究课题,最近被提出。MTO旨在通过进化算法同时解决相关的多目标优化问题。MTO的关键在于基于跨任务共享解决方案的知识转移。值得注意的是,正向知识转移已被证明有助于实现卓越的性能特征。然而,如何找到更有价值的转移解决方案以实现正向转移却很少被探索。考虑到这一点,我们提出了一种新的算法来解决MTO问题。在本文中,如果一个转移的解决方案在其目标任务中是非支配的,那么这种转移就是正向转移。此外,这个正向转移解决方案的邻域将被选作下一代的转移解决方案,因为它们更有可能实现正向转移。针对MTO的基准问题进行了数值研究,以验证所提方法的有效性。实验结果表明,与当前最先进的MTO框架相比,我们提出的框架取得了具有竞争力的结果。