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A Preliminary Study of Adaptive Task Selection in Explicit Evolutionary Many-Tasking

机译:显式进化多任务处理中自适应任务选择的初步研究

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Recently, evolutionary multi-tasking (EMT) has been proposed as a new evolutionary search paradigm that op-timizes multiple problems simultaneously. Due to the knowledge transfer across optimization tasks occurs along the evolutionary search process, EMT has been demonstrated to outperform the traditional single-task evolutionary search algorithms on many complex optimization problems, such as multimodal continuous optimization problems, NP-hard combinatorial optimization problems, and constrained optimization problems. Today, EMT has attracted lots of attentions, and many EMT algorithms have been proposed in the literature. The explicit EMT algorithm (EEMTA) is a recent proposed new EMT algorithm. In contrast to most of existing EMT algorithms, which employ a single population using unified space and common search operators for solving multiple problems, the EEMTA uses multiple populations which possess problem-specific solution representations and search mechanisms for different problems in evolutionary multi-tasking, which thus could lead to enhanced optimization performance. However, the original EEMTA was proposed for solving only two tasks. As knowledge transfer from inappropriate tasks may lead to negative effect on the evolutionary optimization process, additional designs of identifying task pairs for knowledge transfer is necessary in EEMTA for evolutionary multi-tasking with tasks more than two. To the best of our knowledge, there is no research effort has been conducted on this issue. Keeping this in mind, in this paper, we present a preliminary study on the task selection in EEMTA for many-task optimization. As task similarity may lose to capture the usefulness between tasks in evolutionary search, instead of using similarity measures for task selection, here we propose a credit assignment approach for selecting proper task to conduct knowledge transfer in explicit evolutionary many-tasking. The proposed approach is based on the feedbacks from the transferred solutions across tasks, which is adaptively updated along the evolutionary search. To confirm the efficacy of the proposed method, empirical studies on the many-task optimization problem, which consists of 7 commonly used optimization benchmarks, have been presented and discussed.
机译:最近,进化多任务(EMT)已被提出作为一种新的进化搜索范例,可以同时优化多个问题。由于跨优化任务的知识转移是在进化搜索过程中发生的,因此EMT在许多复杂的优化问题(例如多模式连续优化问题,NP硬组合优化问题和约束优化问题。如今,EMT吸引了很多关注,并且文献中已经提出了许多EMT算法。显式EMT算法(EEMTA)是最近提出的新EMT算法。与大多数现有的EMT算法不同,该算法使用统一空间和通用搜索运算符来解决一个问题,而单个群体使用统一空间来解决多个问题,而EEMTA使用具有特定问题解决方案表示形式的多个群体,以及在进化多任务处理中针对不同问题的搜索机制,因此,这可能会提高优化性能。但是,最初提出的EEMTA仅用于解决两个任务。由于不适当任务的知识转移可能导致对进化优化过程的负面影响,因此在EEMTA中,对于任务多于两个的进化多任务处理,有必要进行其他设计以识别用于知识转移的任务对。据我们所知,尚未对此问题进行任何研究。牢记这一点,在本文中,我们对EEMTA中用于多任务优化的任务选择进行了初步研究。由于任务相似性可能无法捕获进化搜索中任务之间的有用性,而不是使用相似性度量进行任务选择,因此,我们提出一种学分分配方法,用于选择合适的任务来进行显式进化多任务处理中的知识转移。所提出的方法基于跨任务传输的解决方案的反馈,该反馈会沿着进化搜索进行自适应更新。为了确认所提出方法的有效性,已经提出并讨论了由7个常用优化基准组成的多任务优化问题的实证研究。

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