• Title of article

    Fusion of Learning Automata to Optimize Multi-constraint Problem

  • Author/Authors

    Motamed، Sara نويسنده Department of Computer Engineering, Islamic Azad University Science and Research Branch, Tehran, Iran , , Ahmadi، Ali نويسنده ,

  • Issue Information
    فصلنامه با شماره پیاپی 9 سال 2015
  • Pages
    6
  • From page
    16
  • To page
    21
  • Abstract
    This paper aims to introduce an effective classification method of learning for partitioning the data in statistical spaces. The work is based on using multi-constraint partitioning on the stochastic learning automata. Stochastic learning automata with fixed or variable structures are a reinforcement learning method. Having no information about optimized operation, such models try to find an answer to a problem. Converging speed in such algorithms in solving different problems and their route to the answer is so that they produce a proper condition if the answer is obtained. However, despite all tricks to prevent the algorithm involvement with local optimal, the algorithms do not perform well for problems with a lot of spread local optimal points and give no good answer. In this paper, the fusion of stochastic learning automata algorithms has been used to solve given problems and provide a centralized control mechanism. Looking at the results, is found that the recommended algorithm for partitioning constraints and finding optimization problems are suitable in terms of time and speed, and given a large number of samples, yield a learning rate of 97.92%. In addition, the test results clearly indicate increased accuracy and significant efficiency of recommended systems compared with single model systems based on different methods of learning automata.
  • Journal title
    Journal of Information Systems and Telecommunication
  • Serial Year
    2015
  • Journal title
    Journal of Information Systems and Telecommunication
  • Record number

    2014560