A Neuro-evolutionary Hyper-heuristic Approach for Constraint Satisfaction Problems

被引:0
|
作者
José Carlos Ortiz-Bayliss
Hugo Terashima-Marín
Santiago Enrique Conant-Pablos
机构
[1] University of Nottingham,Automated Scheduling, Optimisation and Planning (ASAP) Research Group School of Computer Science, Jubilee Campus
[2] Tecnológico de Monterrey,National School of Engineering and Science
来源
Cognitive Computation | 2016年 / 8卷
关键词
Constraint satisfaction; Hyper-heuristics; Neural networks; Evolutionary computation;
D O I
暂无
中图分类号
学科分类号
摘要
Constraint satisfaction problems represent an important topic of research due to their multiple applications in various areas of study. The most common way to solve this problem involves the use of heuristics that guide the search into promising areas of the space. In this article, we present a novel way to combine the strengths of distinct heuristics to produce solution methods that perform better than such heuristics on a wider range of instances. The methodology proposed produces neural networks that represent hyper-heuristics for variable ordering in constraint satisfaction problems. These neural networks are generated and trained by running a genetic algorithm that has the task of evolving the topology of the networks and some of their learning parameters. The results obtained suggest that the produced neural networks represent a feasible alternative for coding hyper-heuristics that control the use of different heuristics in such a way that the cost of the search is minimized.
引用
收藏
页码:429 / 441
页数:12
相关论文
共 50 条
  • [41] A RNN-Based Hyper-heuristic for Combinatorial Problems
    Kieffer, Emmanuel
    Duflo, Gabriel
    Danoy, Gregoire
    Varrette, Sebastien
    Bouvry, Pascal
    EVOLUTIONARY COMPUTATION IN COMBINATORIAL OPTIMIZATION, EVOCOP 2022, 2022, 13222 : 17 - 32
  • [42] Grammatical Evolution Hyper-Heuristic for Combinatorial Optimization Problems
    Sabar, Nasser R.
    Ayob, Masri
    Kendall, Graham
    Qu, Rong
    IEEE TRANSACTIONS ON EVOLUTIONARY COMPUTATION, 2013, 17 (06) : 840 - 861
  • [43] A Hyper-Heuristic Evolutionary Algorithm for Learning Bayesian Network Classifiers
    de Sa, Alex G. C.
    Pappa, Gisele L.
    ADVANCES IN ARTIFICIAL INTELLIGENCE (IBERAMIA 2014), 2014, 8864 : 430 - 442
  • [44] Neuro-evolutionary approach applied for optimizing the PEMFC performance
    Curteanu, Silvia
    Piuleac, Ciprian-George
    Linares, Jose J.
    Canizares, Pablo
    Rodrigo, Manuel A.
    Lobato, Justo
    INTERNATIONAL JOURNAL OF HYDROGEN ENERGY, 2014, 39 (08) : 4037 - 4043
  • [45] Dynamic High Frequency Trading: A Neuro-Evolutionary Approach
    Bradley, Robert
    Brabazon, Anthony
    O'Neill, Michael
    APPLICATIONS OF EVOLUTIONARY COMPUTING, PROCEEDINGS, 2009, 5484 : 233 - 242
  • [46] A hyper-heuristic approach for stochastic parallel assembly line balancing problems with equipment costs
    Lale Özbakır
    Gökhan Seçme
    Operational Research, 2022, 22 : 577 - 614
  • [47] A Hyper-heuristic approach for efficient resource scheduling in grid
    Bhanu, S. Mary Saira
    Gopalan, N. P.
    INTERNATIONAL JOURNAL OF COMPUTERS COMMUNICATIONS & CONTROL, 2008, 3 (03) : 249 - 258
  • [48] A hyper-heuristic approach to aircraft structural design optimization
    Jonathan G. Allen
    Graham Coates
    Jon Trevelyan
    Structural and Multidisciplinary Optimization, 2013, 48 : 807 - 819
  • [49] A hyper-heuristic approach to sequencing by hybridization of DNA sequences
    Jacek Blazewicz
    Edmund K. Burke
    Graham Kendall
    Wojciech Mruczkiewicz
    Ceyda Oguz
    Aleksandra Swiercz
    Annals of Operations Research, 2013, 207 : 27 - 41
  • [50] Optimising Deep Belief Networks by Hyper-heuristic Approach
    Sabar, Nasser R.
    Turky, Ayad
    Song, Andy
    Sattar, Abdul
    2017 IEEE CONGRESS ON EVOLUTIONARY COMPUTATION (CEC), 2017, : 2738 - 2745