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Monte Carlo hyper-heuristics for examination timetabling

机译:蒙特卡洛超启发法用于考试时间表

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摘要

Automating the neighbourhood selection process in an iterative approach that uses multiple heuristics is not a trivial task. Hyper-heuristics are search methodologies that not only aim to provide a general framework for solving problem instances at different difficulty levels in a given domain, but a key goal is also to extend the level of generality so that different problems from different domains can also be solved. Indeed, a major challenge is to explore how the heuristic design process might be automated. Almost all existing iterative selection hyper-heuristics performing single point search contain two successive stages; heuristic selection and move acceptance. Different operators can be used in either of the stages. Recent studies explore ways of introducing learning mechanisms into the search process for improving the performance of hyper-heuristics. In this study, a broad empirical analysis is performed comparing Monte Carlo based hyper-heuristics for solving capacitated examination timetabling problems. One of these hyper-heuristics is an approach that overlaps two stages and presents them in a single algorithmic body. A learning heuristic selection method (L) operates in harmony with a simulated annealing move acceptance method using reheating (SA) based on some shared variables. Yet, the heuristic selection and move acceptance methods can be separated as the proposed approach respects the common selection hyper-heuristic framework. The experimental results show that simulated annealing with reheating as a hyper-heuristic move acceptance method has significant potential. On the other hand, the learning hyper-heuristic using simulated annealing with reheating move acceptance (L-SA) performs poorly due to certain weaknesses, such as the choice of rewarding mechanism and the evaluation of utility values for heuristic selection as compared to some other hyper-heuristics in examination timetabling. Trials with other heuristic selection methods confirm that the best alternative for the simulated annealing with reheating move acceptance for examination timetabling is a previously proposed strategy known as the choice function.
机译:使用多种启发式方法以迭代方式自动化邻域选择过程并非易事。超启发式搜索是一种搜索方法,不仅旨在为解决给定领域中不同难度级别的问题实例提供一个通用框架,而且一个主要目标是扩展通用性级别,以便也可以解决来自不同领域的不同问题。解决了。确实,一个主要的挑战是探索启发式设计过程如何实现自动化。几乎所有执行单点搜索的现有迭代选择超启发式方法都包含两个连续的阶段。启发式选择和移动接受。在任何一个阶段中都可以使用不同的运算符。最近的研究探索了将学习机制引入搜索过程中以改善超启发式算法性能的方法。在这项研究中,进行了广泛的实证分析,比较了基于蒙特卡洛的超启发式方法来解决有能力的考试时间表问题。这些超启发式方法之一是一种将两个阶段重叠并在单个算法主体中展示的方法。学习启发式选择方法(L)与基于某些共享变量的使用再加热(SA)的模拟退火移动接受方法相协调地运行。然而,启发式选择和移动接受方法可以分开,因为所提出的方法尊重通用选择超启发式框架。实验结果表明,将模拟退火与再加热作为一种超启发式移动接受方法具有很大的潜力。另一方面,由于某些弱点,例如奖励机制的选择和对启发式选择的效用值的评估,与某些其他缺点相比,将模拟退火与再加热动作接受(L-SA)结合使用来进行学习的超启发式效果较差。超启发式考试时间表。使用其他启发式选择方法进行的试验证实,用于模拟退火并带有重新加热动作以接受检查时标的最佳替代方法是先前提出的称为选择函数的策略。

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  • 来源
    《Annals of Operations Research》 |2012年第7期|p.73-90|共18页
  • 作者单位

    Automated Scheduling, Optimisation and Planning Research Group, School of Computer Science,University of Nottingham, Jubilee Campus, Wollaton Road, Nottingham NG8 IBB, UK;

    Automated Scheduling, Optimisation and Planning Research Group, School of Computer Science,University of Nottingham, Jubilee Campus, Wollaton Road, Nottingham NG8 IBB, UK;

    Department of Computer Engineering, Yeditepe University, Inonu Mahallesi, Kayisdagi Caddesi,Kadikoy, Istanbul 34755, Turkey;

    Automated Scheduling, Optimisation and Planning Research Group, School of Computer Science,University of Nottingham, Jubilee Campus, Wollaton Road, Nottingham NG8 IBB, UK;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    hyper-heuristics; simulated annealing; meta-heuristics; examination timetabling; reinforcement learning;

    机译:超启发式模拟退火元启发式考试时间表;强化学习;
  • 入库时间 2022-08-18 03:04:30

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