Training Radial Basis Function Neural Network using Stochastic Fractal Search Algorithm to Classify Sonar Dataset
Author(s):
Abstract:
Radial Basis Function Neural Networks (RBF NNs) are one of the most applicable NNs in the classification of real targets. Using of recursive methods and gradient descent for training RBF NNs, improper classification accuracy, failing to local minimum and low-convergence speed are defections of this type of network. To overcome defections, heuristic and meta-heuristic algorithms have been popularized to training RBF networkRadial Basis Function Neural Networks (RBF NNs) are one of the most applicable NNs in the classification of real targets. Despite the use of recursive methods and gradient descent for training RBF NNs, classification improper accuracy, failing to local minimum and low-convergence speed are defects of this type of network. In order to overcome these defects, heuristic and meta-heuristic algorithms have been conventional to training RBF network in the recent years. This study uses Stochastic Fractal Search Algorithm (SFSA) for training RBF NNs. The particles in the new algorithm explore the search space more efficiently by using the diffusion property, which is observed regularly in arbitrary fractals. To assess the performance of the proposed classifier, this network will be evaluated with the two benchmark datasets and a high-dimensional practical dataset (i.e., sonar). Results indicate that new classifier classifies sonar dataset six percent better than the best algorithm and its convergence speed is better than the other algorithms. Also has better performance than classic benchmark algorithms about all datasets. in the recent years. This study uses Stochastic Fractal Search Algorithm (SFSA) for training RBF NNs. The particles in the new algorithm explore the search space more efficiently by using the diffusion property, which is seen regularly in arbitrary fractals. To assess the performance of the proposed classifier, this network will be evaluated with the two benchmark datasets and a high-dimensional practical dataset (i.e., sonar). Results indicate that new classifier indicates better performance than classic benchmark algorithms and classifies sonar dataset six percent better than the best algorithm and its convergence speed is better than the other algorithms.
Keywords:
Language:
English
Published:
Iranian Journal of Electrical and Electronic Engineering, Volume:13 Issue: 1, Mar 2017
Page:
100
https://www.magiran.com/p1680951