Using Biology to Solve a Problem in Automated Machine Learning

نویسندگان

  • Clive Wynne
  • John R. Koza
  • Margaret Jacks Hall
چکیده

This chapter describes how the biological theory of gene duplication described in Susumu Ohno's provocative book, Evolution by Means of Gene Duplication, was brought to bear on a vexatious problem from the domain of automated machine learning. The goal of automatic programming is to create, in an automated way, a computer program that enables a computer to solve a problem. Ideally, an automatic programming system should require that the user pre-specify little about the problem environment. Genetic programming is a domain-independent approach to automated machine learning that attempts to evolve a computer

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تاریخ انتشار 1998