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Speciation Techniques in Evolved Ensembles with Negative Correlation Learning
2006 IEEE International Conference on Evolutionary Computation
The EENCL algorithm [1] has been proposed as a method for designing neural network ensembles for classification tasks, combining global evolution with a local search based on gradient descent. Two mechanisms encourage diversity: Negative Correlation Learning (NCL) and implicit fitness sharing. In order to better understand the success of EENCL, this work replaces speciation by fitness sharing with an island model population structure. We find that providing a population structure that allows
doi:10.1109/cec.2006.1688731
dblp:conf/cec/DuellFY06
fatcat:ds2wcgr4qbbdzese3kh37kvubm