Comparing Neural Networks: Hopfield Network and RBF Network
نویسندگان
چکیده
The two well-known neural network, Hopfield networks and Radial Basis Function networks, have different structures and characteristics. Hopfield neural network and RBF neural network are two of the most commonly-used types of feedback networks and feedforward networks respectively. This study gives an overview for Hopfield neural network and RBF neural network in architectures, the learning processing, and their applications, as well as the comparison between these two networks from several different aspects.
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