Sparse Distributed Memory and Restricted Coulomb Energy Classifier
نویسنده
چکیده
The paper deals with a modification of a Sparse distributed memory that uses some features of a Restricted coulomb energy classifier. The basic principle, topology, data storing and retrieving and one practical application of this net, including special input and output data encodings, are described.
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