Title
Supervised Training of Spiking Neural Network by Adapting the E-MWO Algorithm for Pattern Classification
Abstract
Spiking neural networks (SNN) are more realistic and powerful than the preceding generations of the neural networks (e.g. multi-layer perceptron networks). The SNN can be applied for simulating the brain and its functions, as well as it is able to be employed for different applications such as pattern classification. Different methods have been proposed for supervised training of SNN, however, most of them were validated based on using the classical XOR problem, and they consume long training time if other problems are considered. This paper proposes a new supervised training method for SNN by adapting the Enhanced-Mussels Wandering Optimization algorithm. In addition, a SNN model for pattern classification is proposed. The proposed work is used for pattern classification of real-world problems. The obtained results indicate that the proposed method is competitive alternative in terms of classification accuracy and training time.
Year
DOI
Venue
2019
10.1007/s11063-018-9846-0
Neural Processing Letters
Keywords
Field
DocType
Spiking neural networks,Supervised training,Pattern classification,Mussels wandering optimization,Optimization,Metaheuristic
Pattern recognition,Optimization algorithm,Artificial intelligence,Supervised training,Xor problem,Spiking neural network,Artificial neural network,Perceptron,Heuristic programming,Mathematics,Metaheuristic
Journal
Volume
Issue
ISSN
49
2
1573-773X
Citations 
PageRank 
References 
2
0.38
17
Authors
3
Name
Order
Citations
PageRank
Ahmed A. Abusnaina120.38
Rosni Abdullah215624.82
Ali Kattan3232.46