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Methods of Combining Neural Networks
 and Genetic Algorithms: A Tutorial
                   Talib S. Hussain
                 Queen’s University
              hussain@qucis.queensu.ca



 • Introduction to NNs and GAs


 • Approaches to Combining NNs and GAs
     Supportive:       Applied to different stages of problem
     Collaborative: Applied concurrently to entire problem


 • Issues in Research and Applications
     Baldwin Effect:         Learning guides evolution
     Generalisation:         Must avoid over-specialising
     Genetic Encoding:       Wide variety of methods
Brief Refresher


Neural Networks

     • Learning technique
     • Neurons with weighted connections
     • Learning through weight changes
     • Represent a large class of functions
     • Highly biased search

Genetic Algorithms

     • Optimisation technique
     • Populations of similar solutions
     • Survival of the fittest
     • Propagation by mutation and crossover
     • Weakly biased search
Collaborative Combination Methods

Evolution of Connection Weights
     • GA optimises specific NN weights
     • GA used as the learning rule of the NN
     • Population of NNs with same topology but diff. weights
     • Pro: May converge faster than gradient descent
     •       Less susceptible to local minima
     • Con: Highly inefficient in space and time

Evolution of Architectures
     • GA optimises general NN structural parameters
     • GA applied in conjunction with neural learning
     • Population of NNs with different topologies
     • Pro: Not limited to fixed topology
     •       Examines wide variety of solutions
     • Con: Convergence dependent upon genetic representation
     •       May be highly inefficient in space and/or time

Evolution of Learning Rules
     • GA optimises general NN structural and learning parameters
     • GA applied in conjunction with (variable) neural learning
     • Population of NNs with diff. topologies and learning
       methods
     • Pro: Not limited to fixed topology or learning rule
     •       Applicable to wide range of problems
     • Con: Techniques are new, few and untested
     •       Probably highly inefficient in time

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Methods of Combining Neural Networks and Genetic Algorithms

  • 1. Methods of Combining Neural Networks and Genetic Algorithms: A Tutorial Talib S. Hussain Queen’s University hussain@qucis.queensu.ca • Introduction to NNs and GAs • Approaches to Combining NNs and GAs Supportive: Applied to different stages of problem Collaborative: Applied concurrently to entire problem • Issues in Research and Applications Baldwin Effect: Learning guides evolution Generalisation: Must avoid over-specialising Genetic Encoding: Wide variety of methods
  • 2. Brief Refresher Neural Networks • Learning technique • Neurons with weighted connections • Learning through weight changes • Represent a large class of functions • Highly biased search Genetic Algorithms • Optimisation technique • Populations of similar solutions • Survival of the fittest • Propagation by mutation and crossover • Weakly biased search
  • 3. Collaborative Combination Methods Evolution of Connection Weights • GA optimises specific NN weights • GA used as the learning rule of the NN • Population of NNs with same topology but diff. weights • Pro: May converge faster than gradient descent • Less susceptible to local minima • Con: Highly inefficient in space and time Evolution of Architectures • GA optimises general NN structural parameters • GA applied in conjunction with neural learning • Population of NNs with different topologies • Pro: Not limited to fixed topology • Examines wide variety of solutions • Con: Convergence dependent upon genetic representation • May be highly inefficient in space and/or time Evolution of Learning Rules • GA optimises general NN structural and learning parameters • GA applied in conjunction with (variable) neural learning • Population of NNs with diff. topologies and learning methods • Pro: Not limited to fixed topology or learning rule • Applicable to wide range of problems • Con: Techniques are new, few and untested • Probably highly inefficient in time