A Process of Differentiation in the Assembly Neural Network

نویسندگان

  • Alexander V. Goltsev
  • Ernst M. Kussul
  • Tatiana Baidyk
چکیده

An assembly neural network model is described. The network is artificially partitioned into several sub-networks according to the number of classes that the network has to recognize. In the process of primary learning Hebb's neural assemblies are formed in the sub-networks by means of modification of connections' weights. Then, a differentiation process is executed which significantly improves the recognition accuracy of the network. A computer simulation of the assembly network is performed with the aid of which the differentiation process is studied in a set of experiments on a character recognition task using two types of separate handwritten characters: Ukrainian letters and Arabic numerals of MNIST database.

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تاریخ انتشار 2004