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A Unified Framework of Graph-Based Evolutionary Multitasking Hyper-Heuristic

机译:基于图形的进化多任务超高启发式的统一框架

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摘要

In recent research, hyper-heuristics have attracted increasing attention in various fields. The most appealing feature of hyper-heuristics is that they aim to provide more generalized solutions to optimization problems by searching in a high-level space of heuristics instead of direct problem domains. Despite the promising findings in hyper-heuristics, the design of more general search methodologies still presents a key research. Evolutionary multitasking is a relatively new evolutionary paradigm which attempts to solve multiple optimization problems simultaneously. It exploits the underlying similarities among different optimization tasks by transferring information among them, thus accelerating the optimization of all tasks. Inherently, hyper-heuristics and evolutionary multitasking are similar in the following three ways: 1) they both operate on third-party search spaces; 2) high-level search methodologies are universal; and 3) they both conduct cross-domain optimization. To integrate their advantages effectively, i.e., the knowledge-transfer and cross-domain optimization of evolutionary multitasking and the search in the heuristic spaces of hyper-heuristics, in this article, a unified framework of evolutionary multitasking graph-based hyper-heuristic (EMHH) is proposed. To assess the generality and effectiveness of the EMHH, population-based graph-based hyper-heuristics integrated with evolutionary multitasking to solve exam timetabling and graph-coloring problems, separately and simultaneously, are studied. The experimental results demonstrate the effectiveness, efficiency, and increased the generality of the proposed unified framework compared with single-tasking hyper-heuristics.
机译:在最近的研究中,超级启发式吸引了各种领域的越来越关注。超级启发式的最吸引人的特征是,他们的目标是通过在高级启发式的高级空间中来提供更广泛的解决方案,而不是直接问题域。尽管超级启发式有前途的发现,但更多普通搜索方法的设计仍然是一个关键的研究。进化多任务是一种相对较新的进化范式,试图同时解决多种优化问题。它通过转移它们之间的信息来利用不同优化任务之间的基础相似性,从而加速所有任务的优化。本质上,超级启发式和进化多任务化的三种方式类似:1)它们都在第三方搜索空间上运行; 2)高级搜索方法是普遍的; 3)它们都进行跨域优化。为了有效地整合它们的优点,即进化多场化的知识转移和跨域优化以及在超启发式的启发式空间中搜索,在本文中,是一种基于进化的多任务图形的超启发式的统一框架(EMHH )提出。为了评估EMHH的一般性和有效性,基于人口的基于图形的基于图形的超启发式算法,与进化多任务进行了分别和同时解决考试时间表和图形着色问题。实验结果表明,与单任任务超启发式相比,拟议统一框架的一般性,效率和增加的效率,效率和增加。

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