A survey of swarm and evolutionary computing approaches for deep learning

被引:0
作者
Ashraf Darwish
Aboul Ella Hassanien
Swagatam Das
机构
[1] Helwan University,Faculty of Science, Scientific Research Group in Egypt (SRGE)
[2] Cairo University,Faculty of Computers and Information, Scientific Research Group in Egypt (SRGE)
[3] Indian Statistical Institute,Electronics and Communication Sciences Unit
来源
Artificial Intelligence Review | 2020年 / 53卷
关键词
Deep learning; Metaheuristic algorithms; Artificial neural networks; Deep neural networks; Evolutionary computing; Swarm intelligence;
D O I
暂无
中图分类号
学科分类号
摘要
Deep learning (DL) has become an important machine learning approach that has been widely successful in many applications. Currently, DL is one of the best methods of extracting knowledge from large sets of raw data in a (nearly) self-organized manner. The technical design of DL depends on the feed-forward information flow principle of artificial neural networks with multiple layers of hidden neurons, which form deep neural networks (DNNs). DNNs have various architectures and parameters and are often developed for specific applications. However, the training process of DNNs can be prolonged based on the application and training set size (Gong et al. 2015). Moreover, finding the most accurate and efficient architecture of a deep learning system in a reasonable time is a potential difficulty associated with this approach. Swarm intelligence (SI) and evolutionary computing (EC) techniques represent simulation-driven non-convex optimization frameworks with few assumptions based on objective functions. These methods are flexible and have been proven effective in many applications; therefore, they can be used to improve DL by optimizing the applied learning models. This paper presents a comprehensive survey of the most recent approaches involving the hybridization of SI and EC algorithms for DL, the architecture of DNNs, and DNN training to improve the classification accuracy. The paper reviews the significant roles of SI and EC in optimizing the hyper-parameters and architectures of a DL system in context to large scale data analytics. Finally, we identify some open problems for further research, as well as potential issues related to DL that require improvements, and an extensive bibliography of the pertinent research is presented.
引用
收藏
页码:1767 / 1812
页数:45
相关论文
共 50 条
[21]   A Survey of Text Summarization Approaches Based on Deep Learning [J].
Sheng-Luan Hou ;
Xi-Kun Huang ;
Chao-Qun Fei ;
Shu-Han Zhang ;
Yang-Yang Li ;
Qi-Lin Sun ;
Chuan-Qing Wang .
Journal of Computer Science and Technology, 2021, 36 :633-663
[22]   Deep Learning Approaches for Autonomous Driving a Comprehensive Survey [J].
Vasanthamma ;
Dubey, Manoj ;
Kantharaju, Kanaparthi ;
Kollipara, Naga Venkateshwara Rao ;
Sumalatha, M. .
METALLURGICAL & MATERIALS ENGINEERING, 2025, 31 (01) :346-354
[23]   A Survey of Text Summarization Approaches Based on Deep Learning [J].
Hou, Sheng-Luan ;
Huang, Xi-Kun ;
Fei, Chao-Qun ;
Zhang, Shu-Han ;
Li, Yang-Yang ;
Sun, Qi-Lin ;
Wang, Chuan-Qing .
JOURNAL OF COMPUTER SCIENCE AND TECHNOLOGY, 2021, 36 (03) :633-663
[24]   Video description: A comprehensive survey of deep learning approaches [J].
Ghazala Rafiq ;
Muhammad Rafiq ;
Gyu Sang Choi .
Artificial Intelligence Review, 2023, 56 :13293-13372
[25]   A Survey on Deep Learning Event Extraction: Approaches and Applications [J].
Li, Qian ;
Li, Jianxin ;
Sheng, Jiawei ;
Cui, Shiyao ;
Wu, Jia ;
Hei, Yiming ;
Peng, Hao ;
Guo, Shu ;
Wang, Lihong ;
Beheshti, Amin ;
Yu, Philip S. .
IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2024, 35 (05) :6301-6321
[26]   A comprehensive survey of machine learning and deep learning approaches for anomaly detection in high-performance computing systemsA comprehensive survey of machine learning and deep learning...C. KI et al. [J].
Cibin Ki ;
Ramah Sivakumar ;
Jaison Mulerikkal ;
Binu A ;
Manish Gupta ;
Tony Jan .
The Journal of Supercomputing, 81 (8)
[27]   Parallel Approaches to Accelerate Deep Learning Processes Using Heterogeneous Computing [J].
Nasimov, Rashid ;
Rakhimov, Mekhriddin ;
Javliev, Shakhzod ;
Abdullaeva, Malika .
INTERNET OF THINGS, SMART SPACES, AND NEXT GENERATION NETWORKS AND SYSTEMS, PT II, NEW2AN 2023, RUSMART 2023, 2024, 14543 :32-41
[28]   InterTwin: Deep Learning Approaches for Computing Measures of Effectiveness for Traffic Intersections [J].
Karnati, Yashaswi ;
Sengupta, Rahul ;
Ranka, Sanjay .
APPLIED SCIENCES-BASEL, 2021, 11 (24)
[29]   Fintech Sentiment Analysis using Deep Learning Approaches: a Survey [J].
Anis, Sarah ;
Morsey, Mohamed Mabrouk ;
Aref, Mostafa .
2024 5TH INTERNATIONAL CONFERENCE ON ARTIFICIAL INTELLIGENCE, ROBOTICS AND CONTROL, AIRC 2024, 2024, :118-122
[30]   Deep Learning Approaches to Remaining Useful Life Prediction: A Survey [J].
Cummins, Logan ;
Killen, Brad ;
Thomas, Kirby ;
Barrett, Paul ;
Rahimi, Shahram ;
Seale, Maria .
2021 IEEE SYMPOSIUM SERIES ON COMPUTATIONAL INTELLIGENCE (IEEE SSCI 2021), 2021,