An optimization algorithm guided by a machine learning approach

被引:14
|
作者
Cuevas, Erik [1 ]
Galvez, Jorge [1 ]
机构
[1] Univ Guadalajara, Dept Elect, CUCEI, Ave Revoluc 1500, Guadalajara 44430, Jalisco, Mexico
关键词
Metaheuristics; Self-organization maps; Extracting knowledge; Machine learning; Hybrid systems; EVOLUTIONARY OPTIMIZATION; PARAMETERS; OPERATORS;
D O I
10.1007/s13042-018-00915-0
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Extracting knowledge is the multidisciplinary process of identifying novel, significant, potentially useful, and consistent information in data. One of the most interesting techniques in the fields of extracting knowledge and machine learning are the self-organization maps (SOMs). They have the capacity of mapping complex high-dimensional relations onto a reduced lattice preserving the topological organization of the initial data. On the other hand, Evolutionary approaches provide an effective alternative to solve complex optimization problems in different application domains. One important characteristic in the application of evolutionary methods to real-world problems is its high demand for function evaluations before obtaining a satisfying solution. In their operation, evolutionary techniques produce new solutions without extracting useful knowledge from a large number of solutions already generated. The use of acquired knowledge during the evolution process could significantly improve their performance in conducting the search strategy toward promising regions or increasing its convergence properties. This paper introduces an evolutionary optimization algorithm in which knowledge extracted during its operation is employed to guide its search strategy. In the approach, a SOM is used as extracting knowledge technique to identify the promising areas through the reduction of the search space. Therefore, in each generation, the proposed method uses a subset of the complete group of generated solutions seen so-far to train the SOM. Once trained, the neural unit from the SOM lattice that corresponds to the best solution is identified. Then, by using local information of this neural unit an entire population of candidate solutions is produced. With the use of the extracted knowledge, the new approach improves the convergence to difficult high multi-modal optima by using a reduced number of function evaluations. The performance of our approach is compared to several state-of-the-art optimization techniques considering a set of well-known functions and three real-world engineering problems. The results validate that the introduced method reaches the best balance regarding accuracy and computational cost over its counterparts.
引用
收藏
页码:2963 / 2991
页数:29
相关论文
共 50 条
  • [41] A hybrid machine learning optimization algorithm for multivariable pore pressure prediction
    Deng, Song
    Pan, Hao-Yu
    Wang, Hai-Ge
    Xu, Shou-Kun
    Yan, Xiao-Peng
    Li, Chao-Wei
    Peng, Ming -Guo
    Peng, Hao-Ping
    Shi, Lin
    Cui, Meng
    Zhao, Fei
    PETROLEUM SCIENCE, 2024, 21 (01) : 535 - 550
  • [42] Optimization of Fracturing Parameters with Machine-Learning and Evolutionary Algorithm Methods
    Dong, Zhenzhen
    Wu, Lei
    Wang, Linjun
    Li, Weirong
    Wang, Zhengbo
    Liu, Zhaoxia
    ENERGIES, 2022, 15 (16)
  • [43] Rockburst Prediction Based on Particle Swarm Optimization and Machine Learning Algorithm
    Liu, Yaoru
    Hu, Shaokang
    INFORMATION TECHNOLOGY IN GEO-ENGINEERING, 2020, : 292 - 303
  • [44] An improved machine learning algorithm for optical fiber network path optimization
    Wang W.
    Xu N.
    Hongwai yu Jiguang Gongcheng/Infrared and Laser Engineering, 2021, 50 (10):
  • [45] An Accelerated Convex Optimization Algorithm with Line Search and Applications in Machine Learning
    Chumpungam, Dawan
    Sarnmeta, Panitarn
    Suantai, Suthep
    MATHEMATICS, 2022, 10 (09)
  • [46] Big data mining optimization algorithm based on machine learning model
    Jiao C.
    Revue d'Intelligence Artificielle, 2020, 34 (01) : 51 - 57
  • [47] An Automated Machine Learning-Genetic Algorithm Framework With Active Learning for Design Optimization
    Owoyele, Opeoluwa
    Pal, Pinaki
    Torreira, Alvaro Vidal
    JOURNAL OF ENERGY RESOURCES TECHNOLOGY-TRANSACTIONS OF THE ASME, 2021, 143 (08):
  • [48] Boosted Genetic Algorithm Using Machine Learning for Traffic Control Optimization
    Mao, Tuo
    Mihaita, Adriana-Simona
    Chen, Fang
    Vu, Hai L.
    IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2022, 23 (07) : 7112 - 7141
  • [49] A Modified Stochastic Gradient Descent Optimization Algorithm With Random Learning Rate for Machine Learning and Deep Learning
    Shim, Duk-Sun
    Shim, Joseph
    INTERNATIONAL JOURNAL OF CONTROL AUTOMATION AND SYSTEMS, 2023, 21 (11) : 3825 - 3831
  • [50] Machine Learning in Manufacturing: Processes Classification Using Support Vector Machine and Horse Optimization Algorithm
    Moldovan, Dorin
    Anghel, Ionut
    Cioara, Tudor
    Salomie, Ioan
    2020 19TH ROEDUNET CONFERENCE: NETWORKING IN EDUCATION AND RESEARCH (ROEDUNET), 2020,