Title of article :
A hybrid algorithm for artificial neural network training
Author/Authors :
Yaghini، نويسنده , , Masoud and Khoshraftar، نويسنده , , Mohammad M. and Fallahi، نويسنده , , Mehdi، نويسنده ,
Abstract :
Artificial neural network (ANN) training is one of the major challenges in using a prediction model based on ANN. Gradient based algorithms are the most frequent training algorithms with several drawbacks. The aim of this paper is to present a method for training ANN. The ability of metaheuristics and greedy gradient based algorithms are combined to obtain a hybrid improved opposition based particle swarm optimization and a back propagation algorithm with the momentum term. Opposition based learning and random perturbation help population diversification during the iteration. Use of time-varying parameter improves the search ability of standard PSO, and constriction factor guarantees particles convergence. Since several contingent local minima conditions may happen in the weight space, a new cross validation method is proposed to prevent overfitting. Effectiveness and efficiency of the proposed method are compared with several other famous ANN training algorithms on the various benchmark problems.
Keywords :
Time-varying parameter , Artificial neural networks , Hybrid training algorithm , Backpropagation algorithm , particle swarm optimization , Cross Validation
Journal title :
Astroparticle Physics