GEP Book

  Home
  News
  Author
  Q&A
  Tutorials
  Downloads
  GEP Biblio
  Contacts

  Visit Gepsoft

 

C. FERREIRA Invited Tutorial Presented at WSC6, 2001

Gene Expression Programming in Problem Solving

Abstract
 
In this work, the recently invented learning algorithm, gene expression programming, will be introduced focusing mainly on problem solving. Besides a simple introductory example, I chose two relatively complex test problems of symbolic regression. One of these problems was chosen in an attempt to shed some light on the question of constant creation in models discovered with learning algorithms and to provide a palpable measure of the accuracy of the evolved models and the efficiency of the algorithms. The chosen problems also show how gene expression programming is capable of modeling complex realities with great accuracy, allowing, at the same time, the extraction of knowledge from the evolved models.

Home | Contents | Next