USING MODULAR NEURAL NETWORKS AND MACHINE LEARNING WITH REINFORCEMENT LEARNING TO SOLVE CLASSIFICATION PROBLEMS

被引:1
|
作者
Leoshchenko, S. D. [1 ]
Oliinyk, A. O. [1 ]
Subbotin, S. A. [1 ]
Kolpakova, T. O. [1 ]
机构
[1] Natl Univ Zaporizhzhia Polytech, Dept Software Tools, Zaporizhzhia, Ukraine
关键词
modular neural networks; image classification; synthesis; diagnostics; topology; artificial intelligence; reinforce- ment learning;
D O I
10.15588/1607-3274-2024-2-8
中图分类号
TP3 [计算技术、计算机技术];
学科分类号
0812 ;
摘要
Context. The solution of the classification problem (including graphical data) based on the use of modular neural networks and modified machine learning methods with reinforcement for the synthesis of neuromodels that are characterized by a high level of accuracy is considered. The object of research is the process of synthesizing modular neural networks based on machine learning methods with reinforcement. Objective is to develop a method for synthesizing modular neural networks based on machine learning methods with reinforcement, for constructing high-precision neuromodels for solving classification problems. Method. A method for synthesizing modular neural networks based on a reinforcement machine learning approach is proposed. At the beginning, after initializing a system of modular neural networks built on the bottom-up principle, input data is provided - a training set of data from the sample and a hyperparameter to select the size of each module. The result of this method is a trained system of modular neural networks. The process starts with a single supergroup that contains all the categories of the data set. Then the network size is selected. The output matrix is softmax, similar to the trained network. After that, the average probability of softmax is used as a similarity indicator for group categories. If new child supergroups are formed, the module learns to classify between new supergroups. The training cycle of modular neural network modules is repeated until the training modules of all supergroups are completed. This method allows you to improve the accuracy of the resulting model. Results. The developed method is implemented and investigated on the example of neuromodel synthesis based on a modular neural network for image classification, which can later be used as a model for technical diagnostics. Using the developed method significantly reduces the resource intensity of setting up hyperparameters. conclusions. The conducted experiments confirmed the operability of the proposed method of neuromodel synthesis for image classification and allow us to recommend it for use in practice in the synthesis of modular neural networks as a basis for classification models for further automation of tasks of technical diagnostics and image recognition using big data. Prospects for further research may lie in using the parallel capacities of GPU-based computing systems to organize directly modular neural networks based on them.
引用
收藏
页码:71 / 81
页数:11
相关论文
共 50 条
  • [31] Decentralized Machine Learning for Dynamic Resource Optimization in Wireless Networks using Reinforcement Learning
    Shalini, K. Shantha
    Kopperundevi, N.
    Rajkumar, R.
    Radhika, A.
    Gopianand, M.
    Ram, M. Preethi
    JOURNAL OF ELECTRICAL SYSTEMS, 2024, 20 (05) : 2025 - 2033
  • [32] Control of associative chaotic neural networks using a reinforcement learning
    Sato, N
    Adachi, M
    Kotani, M
    ADVANCES IN NEURAL NETWORKS - ISNN 2004, PT 1, 2004, 3173 : 395 - 400
  • [33] Reinforcement learning of dynamic behavior by using recurrent neural networks
    Ahmet Onat
    Hajime Kita
    Yoshikazu Nishikawa
    Artificial Life and Robotics, 1997, 1 (3) : 117 - 121
  • [34] Structural Credit Assignment in Neural Networks using Reinforcement Learning
    Gupta, Dhawal
    Mihucz, Gabor
    Schlegel, Matthew K.
    Kostas, James E.
    Thomas, Philip S.
    White, Martha
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 34 (NEURIPS 2021), 2021,
  • [35] Some Issues of the Paradigm of Multi-Learning Machine - Modular Neural Networks
    Wang, Pan
    Feng, Shuai
    Fan, Zhun
    INTERNATIONAL JOURNAL OF DISTRIBUTED SENSOR NETWORKS, 2009, 5 (01): : 46 - 46
  • [36] Using neural networks to solve testing problems
    Kirkland, LV
    Wright, RG
    IEEE AEROSPACE AND ELECTRONIC SYSTEMS MAGAZINE, 1997, 12 (08) : 36 - 40
  • [37] Using neural networks to solve testing problems
    Kirkland, LV
    Wright, RG
    AUTOTESTCON '96 - THE SYSTEM READINESS TECHNOLOGY CONFERENCE: TEST TECHNOLOGY AND COMMERCIALIZATION, CONFERENCE RECORD, 1996, : 298 - 302
  • [38] Some issues of the paradigm of multi-learning machine - Modular neural networks
    Wang, Pan
    Feng, Shuai
    Fan, Zhun
    INTERNATIONAL SYMPOSIUM ON ADVANCES IN COMPUTER AND SENSOR NETWORKS AND SYSTEMS, PROCEEDINGS: IN CELEBRATION OF 60TH BIRTHDAY OF PROF. S. SITHARAMA IYENGAR FOR HIS CONTRIBUTIONS TO THE SCIENCE OF COMPUTING, 2008, : 388 - 395
  • [39] Machine Learning to Solve Vehicle Routing Problems: A Survey
    Bogyrbayeva, Aigerim
    Meraliyev, Meraryslan
    Mustakhov, Taukekhan
    Dauletbayev, Bissenbay
    IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2024, 25 (06) : 4754 - 4772
  • [40] Discussion on classification problems in machine learning
    Yao, Han
    PROCEEDINGS OF THE 2015 2ND INTERNATIONAL WORKSHOP ON MATERIALS ENGINEERING AND COMPUTER SCIENCES (IWMECS 2015), 2015, 33 : 761 - 763