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THE NEURAL NETWORK METHOD CLASSIFICATION OF LITERARY TEXT FROM THE VIEWPOINT OF ITS GENRE IDENTIFICATION

https://doi.org/10.33236/2307-910Х- 2018-4-24-66-71

Abstract

Digital technologies today allow processing a large number of literary sources in order to ensure the availability and preservation of historical heritage.

About the Authors

Ekaterina Andreevna Kuchukova
North-Caucasus Federal University
Russian Federation


Irina Andreevna Babenko
North-Caucasus Federal University
Russian Federation


Natalia Grigorievna Gudieva
North-Caucasus Federal University
Russian Federation


Safwat Chiad Al-Galda
North-Caucasus Federal University
Russian Federation


References

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Review

For citations:


Kuchukova E.A., Babenko I.A., Gudieva N.G., Al-Galda S.Ch. THE NEURAL NETWORK METHOD CLASSIFICATION OF LITERARY TEXT FROM THE VIEWPOINT OF ITS GENRE IDENTIFICATION. Modern Science and Innovations. 2018;(4):66-71. (In Russ.) https://doi.org/10.33236/2307-910Х- 2018-4-24-66-71

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ISSN 2307-910X (Print)