Transfer Optimization has gained a remarkable attention from the Swarm and Evolutionary Computation community in the recent years. It is undeniable that the concepts underlying Transfer Optimization are formulated on solid grounds. However, evidences observed in recent contributions confirm that there are critical aspects that are not properly addressed to date. This short communication aims to engage the readership around a reflection on these issues, and to provide rationale why they remain unsolved. Specifically, we emphasize on three critical points of Evolutionary Multitasking Optimization: i) the plausibility and practical applicability of this paradigm; ii) the novelty of some proposed multitasking methods; and iii) the methodologies used for evaluating newly proposed multitasking algorithms. As a result of this research, we conclude that some important efforts should be directed by the community in order to keep the future of this promising field on the right track. Our ultimate purpose is to unveil gaps in the current literature, so that prospective works can attempt to fix these gaps, avoiding to stumble on the same stones and eventually achieve valuable advances in the area.
翻译:近几年来,最优化的转让已经引起了摇篮和进化计算界的极大关注,不可否认的是,最优化的转让所依据的概念是在坚实的基础之上形成的,然而,最近发表的材料中观察到的证据证实,迄今为止有一些关键方面没有得到适当处理。这一简短的交流旨在让读者围绕对这些问题的思考参与进来,并解释为什么这些问题仍然得不到解决。具体地说,我们强调进化多任务优化的三个关键点:一)这一模式的可信赖性和实际适用性;二)一些拟议的多任务方法的新颖性;三)用于评价新提出的多任务算法的方法。作为这项研究的结果,我们的结论是,社区应该作出一些重要的努力,以便使这一有希望的领域的未来保持在正确的轨道上。我们的最终目标是揭开现有文献中的差距,以便未来的作品能够试图弥补这些差距,避免在同样的石块上跌落,并最终在该地区取得有价值的进展。