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Comparison of NEAT and HyperNEAT Performance on a Strategic Decision-Making Problem

Genetic and Evolutionary Computing(2011)

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摘要
Neuroevolution is a useful machine learning approach for problems with limited domain knowledge, but it has not done well with strategic decision-making problems, where the correct action varies sharply as the agent moves across states. Two promising neuroevolution algorithms are Neuro Evolution of Augmenting Topologies (NEAT) and its extension, Hyper NEAT. We compare the performance of these two algorithms on a benchmark problem, Keep away Soccer, that requires strategic decision-making. Our results demonstrate that Hyper NEAT outperforms NEAT on a simple instance of the problem but that its advantage disappears when the problem is complicated.
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关键词
decision making,evolutionary computation,learning (artificial intelligence),HyperNEAT,Keepaway Soccer,benchmark problem,machine learning,neuroevolution algorithm,neuroevolution of augmenting topologies,strategic decision making problem,algorithm performance,genetic algorithms,machine learning,neuroevolution
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