Three-Neuron Nonlinear Spring Model of Self-Organizing Map
نویسندگان
چکیده
In our previous research, as the first step to realize a new SelfOrganizing Map model, we have proposed a simple one dimensional 2-neuron model connected by a nonlinear spring. This study proposes one dimensional 3-neuron model connected by a nonlinear spring in order to represent a relationship between the winner and its neighboring neurons in SOM algorithm. Furthermore, we consider two kinds of forces by external input vectors and investigate their behaviors.
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