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Article
Knowledge Constrained Evolutionary Algorithms: A Case Study for Financial Investing
International Journal of Artificial Intelligence and Soft Computing (2014)
  • Jie Du, Grand Valley State University
  • Hayden Wimmer, Georgia Southern University
  • Roy Rada, University of Maryland
Abstract
The purpose of this paper is to examine the role of domain knowledge in guiding evolution. The hypothesis examined in this paper is that the use of knowledge represented as a semantic network will bias mutation so that changes in structure measured by the semantic net correspond to changes in function. This hypothesis is tested utilising information and data from the finance domain. In this paper relevant literature is reviewed and an experimental framework is proposed which incorporates knowledge in evolution. An empirical investigation is presented to demonstrate the role of knowledge and gradualness in evolution. Future work will involve investigating methods to identify or construct a semantic network which is 'meaningful' to humans as well as machines.
Keywords
  • Knowledge,
  • Gradualness,
  • Mutation,
  • Financial investing,
  • Artificial intelligence,
  • Soft computing
Publication Date
November 18, 2014
DOI
10.1504/IJAISC.2014.065801
Citation Information
Jie Du, Hayden Wimmer and Roy Rada. "Knowledge Constrained Evolutionary Algorithms: A Case Study for Financial Investing" International Journal of Artificial Intelligence and Soft Computing Vol. 4 Iss. 4 (2014) p. 335 - 353 ISSN: 1755-4969
Available at: http://works.bepress.com/hayden-wimmer/47/