Zombie Survival Optimization in Solving University Examination Timetabling Problem

Cheng Weng Fong, H. Asmuni, Pui Huang Leong, Yet Huat Sam, Yee Yong Pang, Hiew Moi Sim
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引用次数: 3

Abstract

Timetabling is a task of assigning a set of events into a set of resources and satisfying predefined constraints. University timetabling is one of the most stdied timetabling problems among the timetabling domains. It is also a time consuming administrative task that need to be performed in all the academic institutions as there are many constraints needed to be considered. In this study, a zombie survival optimization (ZSO) has been applied to address university examination timetabling problem. The underlying idea of ZSO is based on the foraging behavior of zombies, where zombies represent searching agents (solutions) in searching for antidote (optimal solution). There are three modes in ZSO, namely exploration mode, hunter mode and human exploitation mode where zombies explore for solutions (randomly) in exploration mode, explore towards a human (promising search region) in hunter mode and turn into human to search (exploitation) for local optimum. The ZSO is tested on Carter’s university un-capacitated examination benchmark dataset and results demonstrated that ZSO is capable of producing promising quality of solutions when compared with the published methods in the literature. In fact, ZSO managed to record new best-known results on 3 instances of the dataset.
僵尸生存优化解决大学考试排课问题
时间表是将一组事件分配到一组资源并满足预定义约束的任务。大学排课是排课领域中研究最多的问题之一。这也是一项耗时的行政任务,需要在所有学术机构中执行,因为需要考虑许多限制因素。在本研究中,僵尸生存优化(ZSO)应用于解决大学考试排课问题。ZSO的基本思想是基于僵尸的觅食行为,其中僵尸代表寻找解毒剂(最优解)的搜索代理(解)。ZSO有三种模式,即探索模式、猎人模式和人类开发模式,其中僵尸在探索模式下寻找解决方案(随机),在猎人模式下向人类(有前途的搜索区域)探索,然后变成人类搜索(开发)局部最优。ZSO在Carter的大学无能力考试基准数据集上进行了测试,结果表明,与文献中已发表的方法相比,ZSO能够产生有希望的解决方案质量。事实上,ZSO设法在数据集的3个实例上记录了新的最知名的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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