A comprehensive review of deep neuro-fuzzy system architectures and their optimization methods

被引:0
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作者
Noureen Talpur
Said Jadid Abdulkadir
Hitham Alhussian
·Mohd Hilmi Hasan
Norshakirah Aziz
Alwi Bamhdi
机构
[1] Universiti Teknologi PETRONAS,Centre for Research in Data Science, Computer Information Science Department
[2] Umm Al Qura University Makkah,Department of Computer Sciences, College of Computing
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关键词
Deep neuro-fuzzy systems; Deep neural networks; Optimization methods; Derivative-based optimization; Derivative-free optimization; Metaheuristics;
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学科分类号
摘要
Deep neuro-fuzzy systems (DNFSs) have been successfully applied to real-world problems using the efficient learning process of deep neural networks (DNNs) and reasoning aptitude from fuzzy inference systems (FIS). This study provides a comprehensive review of DNFS dividing it into two essential parts. The first part aims to provide a thorough understanding of DNFS and its architectural representation, whereas the second part reviews DNFS optimization methods. This study aims to assist researchers in understanding the various ways DNFS models are developed by hybridizing DNN and FIS, as well as gradient (derivative)-based methods and metaheuristics (derivative-free) optimization, as discussed in the literature. This study revealed that the proposed DNFS architectures performed 11.6% better than non-fuzzy models, with an overall accuracy of 81.4%. The investigation based on optimization methods revealed that DNFS with metaheuristics optimization methods has shown an overall accuracy of 93.56%, which is 21.10% higher than the DNFS models using gradient-based methods. Additionally, this study showed that DNFS networks presented in the literature have integrated DNN with typical FIS, although more satisfactory results can be obtained using a new generation of FIS termed fractional FIS (FFIS) and Mamdani complex FIS (M-CFIS). Besides, dynamic neural networks are suggested in the replacement of static DNNs to facilitate dynamic learning. Some studies have also demonstrated the optimization of DNFS using classical gradient-based approaches that can affect network performance when solving highly nonlinear problems. This study suggests implementing optimization methods with new and improvised metaheuristics to improve the training and performance of the models.
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页码:1837 / 1875
页数:38
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