通过元学习推荐Flowshop问题的元启发式和配置:分析和设计

L. M. Pavelski, Marie-Éléonore Kessaci, M. Delgado
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引用次数: 2

摘要

本文提出了一种基于梯度增强机的元学习系统,以推荐局部搜索启发式方法来解决流水车间问题。所研究的方法可以决定一个元启发式(MH)是否适合每个实例。它还可以使用来自Irace参数调优的数据为每个推荐的MH提供合适的参数。本文考虑了爬坡算法、禁忌搜索算法、模拟退火算法和迭代局部搜索算法作为求解流程车间实例的候选算法。在实验中,考虑了540个flowshop问题(具有不同的大小、变量和目标)和每个问题的50个实例,结果总共处理了27,000个实例。我们在元学习系统中使用简单的低级元特征,如作业和机器数量、处理时间分配、流水车间变量、目标和评估预算。除了测试推荐的准确性和Kappa(用于MH和分类参数),RMSE和R2(用于数值参数)之外,我们还探讨了MH推荐模型中每个元特征的重要性。此外,我们对MH配置进行了多次对应分析,以进一步了解参数值。结果表明,所提出的方法是有希望的,特别是在MH推荐方面。
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Recommending Meta-Heuristics and Configurations for the Flowshop Problem via Meta-Learning: Analysis and Design
This work proposes a meta-learning system based on Gradient Boosting Machines to recommend local search heuristics for solving flowshop problems. The investigated approach can decide if a metaheuristic (MH) is suitable for each instance. It can also provide well-suited parameters for each recommended MH using data from Irace parameter tuning. This paper considers four MHs (Hill Climbing, Tabu Search, Simulated Annealing, and Iterated Local Search) as candidates to solve several flowshop instances. In the experiments, 540 flowshop problems (with different sizes, variants, and objectives) and 50 instances for each problem are considered, resulting in a total of 27,000 instances being addressed. We use simple low-level meta-features in the meta-learning system like the number of jobs and machines, processing time distribution, flowshop variant, objective, and evaluations budget. Besides testing the recommendations in terms of accuracy and Kappa (for MH and categorical parameters), RMSE and R2 (for numerical parameters), we also explore the importance of each meta-feature in MH recommendation models. Moreover, we perform a multiple correspondence analysis on MH configurations to gain further insights into the parameters values. Results show that the proposed approach is promising, particularly for MH recommendation.
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