A New NEAT Algorithm to Particle System Modeled by ANN

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Abstract:

One problem in NEAT is too difficult to get the adaptive function value , Basing on some hypothesizes, we only need to widen the distance of features of speciation in the population the more the better. So the fitness function is to find the average characteristic distance of every speciation in current population, choose first n biggest speciation to leave, and remove others.

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2089-2092

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March 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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