Application of Meta-Heuristic Algorithms for Training Neural Networks and Deep Learning Architectures: A Comprehensive Review

被引:0
作者
Mehrdad Kaveh
Mohammad Saadi Mesgari
机构
[1] K. N. Toosi University of Technology,Department of Geodesy and Geomatics
来源
Neural Processing Letters | 2023年 / 55卷
关键词
Deep learning (DL); Artificial neural networks (ANN); Meta-heuristics (MH); Hyper-parameters optimization; Training; And gradient-based back propagation (BP) learning algorithm;
D O I
暂无
中图分类号
学科分类号
摘要
The learning process and hyper-parameter optimization of artificial neural networks (ANNs) and deep learning (DL) architectures is considered one of the most challenging machine learning problems. Several past studies have used gradient-based back propagation methods to train DL architectures. However, gradient-based methods have major drawbacks such as stucking at local minimums in multi-objective cost functions, expensive execution time due to calculating gradient information with thousands of iterations and needing the cost functions to be continuous. Since training the ANNs and DLs is an NP-hard optimization problem, their structure and parameters optimization using the meta-heuristic (MH) algorithms has been considerably raised. MH algorithms can accurately formulate the optimal estimation of DL components (such as hyper-parameter, weights, number of layers, number of neurons, learning rate, etc.). This paper provides a comprehensive review of the optimization of ANNs and DLs using MH algorithms. In this paper, we have reviewed the latest developments in the use of MH algorithms in the DL and ANN methods, presented their disadvantages and advantages, and pointed out some research directions to fill the gaps between MHs and DL methods. Moreover, it has been explained that the evolutionary hybrid architecture still has limited applicability in the literature. Also, this paper classifies the latest MH algorithms in the literature to demonstrate their effectiveness in DL and ANN training for various applications. Most researchers tend to extend novel hybrid algorithms by combining MHs to optimize the hyper-parameters of DLs and ANNs. The development of hybrid MHs helps improving algorithms performance and capable of solving complex optimization problems. In general, the optimal performance of the MHs should be able to achieve a suitable trade-off between exploration and exploitation features. Hence, this paper tries to summarize various MH algorithms in terms of the convergence trend, exploration, exploitation, and the ability to avoid local minima. The integration of MH with DLs is expected to accelerate the training process in the coming few years. However, relevant publications in this way are still rare.
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页码:4519 / 4622
页数:103
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  • [1] Bouwmans T(2019)Deep neural network concepts for background subtraction: a systematic review and comparative evaluation Neural Netw 117 8-66
  • [2] Javed S(2015)Deep learning in neural networks: an overview Neural Netw 61 85-117
  • [3] Sultana M(2020)A review on neural network models of schizophrenia and autism spectrum disorder Neural Netw 122 338-363
  • [4] Jung SK(2020)Artificial neural networks in microgrids: a review Eng Appl Artif Intell 95 103894-273
  • [5] Schmidhuber J(2019)A survey on metaheuristic optimization for random single-hidden layer feedforward neural network Neurocomputing 335 261-116
  • [6] Lanillos P(2017)Metaheuristic design of feedforward neural networks: a review of two decades of research Eng Appl Artif Intell 60 97-1812
  • [7] Oliva D(2020)A survey of swarm and evolutionary computing approaches for deep learning Artif Intell Rev 53 1767-26
  • [8] Philippsen A(2017)A survey of deep neural network architectures and their applications Neurocomputing 234 11-478
  • [9] Yamashita Y(1997)A sequential learning scheme for function approximation using minimal radial basis function neural networks Neural Comput 9 461-38
  • [10] Nagai Y(2005)Smooth function approximation using neural networks IEEE Trans Neural Netw 16 24-12