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Journal section "Socio-economic research"

Usage of Artificial Neural Networks in Modern Society

Alfer'ev D.A.

Volume 6, Issue 3, 2020

Alfer'ev D.A. Usage of Artificial Neural Networks in Modern Society. Social area, 2020, vol. 6, no. 3. DOI: 10.15838/sa.2020.3.25.6 URL: http://socialarea-journal.ru/article/28618?_lang=en

DOI: 10.15838/sa.2020.3.25.6

Abstract   |   Authors   |   References
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