ISSN 0869-6632 (Print)
ISSN 2542-1905 (Online)


For citation:

Chernavskii D. S., Karp V. P., Nikitin A. P., Chernavskaya O. D. The construction scheme of neuroprocessors able to realize the basic functions of thinking and scientific creativity. Izvestiya VUZ. Applied Nonlinear Dynamics, 2011, vol. 19, iss. 6, pp. 21-35. DOI: 10.18500/0869-6632-2011-19-6-21-35

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Language: 
Russian
Article type: 
Article
UDC: 
004.81

The construction scheme of neuroprocessors able to realize the basic functions of thinking and scientific creativity

Autors: 
Chernavskii Dmitry Sergeevich, P.N. Lebedev Physical Institute of the Russian Academy of Sciences
Karp Viktorija Pavlovna, P.N. Lebedev Physical Institute of the Russian Academy of Sciences
Nikitin Aleksandr Pavlovich, P.N. Lebedev Physical Institute of the Russian Academy of Sciences
Chernavskaya Olga Dmitrievna, P.N. Lebedev Physical Institute of the Russian Academy of Sciences
Abstract: 

We propose a version of the neuroprocessor construction scheme, which in principle capable to solve problems commonly treated as creative work. The role of conventional information is discussed, and the specific block for the symbol formation is suggested. The system capable to solve logic problems has been pointed out. It is shown that the symbol (logical) subsystem is able to interpolate and extrapolate in the process of pattern recognition and prognosis. It is shown that creative problems (connected with the lack of information or the algorithm internal conflicts) could not been solved within the symbol (logical) subsystem. The notions of intuitive and logic thinking as applied to neurocomputing, and their realization in the given scheme is discussed. The concept of transformation of intuitive into logical thinking is presented.

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Received: 
13.07.2011
Accepted: 
13.07.2011
Published: 
29.02.2012
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