Design of a Self-Organizing Learning Array system
نویسندگان
چکیده
This paper discusses a concept of Self-Organizing Learning Array developed for programmable hardware realization. This system is designed for solving an unspecified machine-learning problems such as classification and recognition. Basic design of the array including neurons interconnections and organization is described. Symbolic values assignment method and selforganizing principle are also discussed in this paper.
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