• Title of article

    Distributed Parameter Tuning for Genetic Algorithms

  • Author/Authors

    David F. Barrero، نويسنده , , Antonio Gonz alez-Pardo، نويسنده , , David Camacho، نويسنده , , and Mar ?a D.R-Moreno، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2010
  • Pages
    17
  • From page
    661
  • To page
    677
  • Abstract
    Genetic Algorithms (GA) is a family of search algorithms based on the mechanics of natural selection and biological evolution. They are able to efficiently exploit historical information in the evolution process to look for optimal solutions or approximate them for a given problem, achieving excellent performance in optimization problems that involve a large set of dependent variables. Despite the excellent results of GAs, their use may generate new problems. One of them is how to provide a good fitting in the usually large number of parameters that must be tuned to allow a good performance.This paper describes a new platform that is able to extract the Regular Expression that matches a set of examples, using a supervised learning and agent-based framework. In order to do that, GA-based agents decompose the GA execution in a distributed sequence of operations performed by them. The platform has been applied to Language induction problem, for that reason the experiments are focused on the extraction of the regular expression that matches a set of examples. Finally, the paper shows the efficiency of the proposed platform (in terms of fitness value) applied to three case studies: emails, phone numbers and URLs. Moreover, it is described how the codification of the alphabet affects to the performance of the platform.
  • Keywords
    Agents , parameter tuning , Genetic algorithms
  • Journal title
    Computer Science and Information Systems
  • Serial Year
    2010
  • Journal title
    Computer Science and Information Systems
  • Record number

    679281