• 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 ,

  • Pages
    9
  • From page
    293
  • To page
    301
  • 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
  • Record number

    2047584