Do not match, Inherit: Fitness surrogates for genetics-based machine learning techniques
13 July 2007Llorà, X., Sastry, K., Yu, T.-L., Goldberg, D. E. (2007). Proceedings of the 2007 Genetic and Evolutionary Computation Conference (GECCO 2007). 1798–1805. [Preprint: IlliGAL report no. 2007011] [Full paper - DOI] [Presentation slides].
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One Response to “Do not match, Inherit: Fitness surrogates for genetics-based machine learning techniques”
July 18th, 2007 at 12:54 pm
[…] Llorà, X., Sastry, K., Yu, T.-L., Goldberg, DE (2007). Proceedings of the 2007 Genetic and Evolutionary Computation Conference (GECCO 2007). 1798–1805. [Preprint: IlliGAL report no. 2007011]. …more […]