Neuromathematics as an effective tool for forecasting social development of Russian regions

In the context of the national economic turbulence, it becomes important to forecast the social development of constituent entities of the Russian Federation. In order to provide highly accurate forecasting, neural network technologies are used in the research (a Bayesian assembly of the dynamic neu...

Full description

Saved in:
Bibliographic Details
Main Authors: R.V. Gubarev, E.I. Dzyuba
Format: Article
Language:English
Published: Kazan Federal University 2019-06-01
Series:Учёные записки Казанского университета: Серия Физико-математические науки
Subjects:
Online Access:https://kpfu.ru/uz-eng-phm-2019-2-11.html
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1841563307019862016
author R.V. Gubarev
E.I. Dzyuba
author_facet R.V. Gubarev
E.I. Dzyuba
author_sort R.V. Gubarev
collection DOAJ
description In the context of the national economic turbulence, it becomes important to forecast the social development of constituent entities of the Russian Federation. In order to provide highly accurate forecasting, neural network technologies are used in the research (a Bayesian assembly of the dynamic neural network of various configurations is formed). As a result of the forecasting, it is found, that the leading Russian regions should have a lower social development index in 2016–2017 as compared to 2014–2015. A slowdown of social development is also predicted for the leading regions of the Volga Federal District in 2016–2017, but only as compared to 2015. The obtained data show that the social development index in the Republic of Bashkortostan changes a little. Nevertheless, a significant lagging of Bashkortostan behind the leading regions of the Russian Federation and the Volga Federal District in the social sphere is predicted: Bashkortostan is a competitive region in terms of the living standards, but not in the sphere of scientific research and innovations. For this reason, measures encouraging innovative development of Russian regions as exemplified by the Republic of Bashkortostan are introduced and discussed in the paper.
format Article
id doaj-art-92e78449cbaa4301b154c6bb2b0dcbdd
institution Kabale University
issn 2541-7746
2500-2198
language English
publishDate 2019-06-01
publisher Kazan Federal University
record_format Article
series Учёные записки Казанского университета: Серия Физико-математические науки
spelling doaj-art-92e78449cbaa4301b154c6bb2b0dcbdd2025-01-03T00:04:28ZengKazan Federal UniversityУчёные записки Казанского университета: Серия Физико-математические науки2541-77462500-21982019-06-01161231532110.26907/2541-7746.2019.2.315-321Neuromathematics as an effective tool for forecasting social development of Russian regionsR.V. Gubarev0E.I. Dzyuba1Office of the All-Russia People's Front in the Republic of Bashkortostan, Ufa, 450077 RussiaPlekhanov Russian University of Economics, Moscow, 115054 RussiaIn the context of the national economic turbulence, it becomes important to forecast the social development of constituent entities of the Russian Federation. In order to provide highly accurate forecasting, neural network technologies are used in the research (a Bayesian assembly of the dynamic neural network of various configurations is formed). As a result of the forecasting, it is found, that the leading Russian regions should have a lower social development index in 2016–2017 as compared to 2014–2015. A slowdown of social development is also predicted for the leading regions of the Volga Federal District in 2016–2017, but only as compared to 2015. The obtained data show that the social development index in the Republic of Bashkortostan changes a little. Nevertheless, a significant lagging of Bashkortostan behind the leading regions of the Russian Federation and the Volga Federal District in the social sphere is predicted: Bashkortostan is a competitive region in terms of the living standards, but not in the sphere of scientific research and innovations. For this reason, measures encouraging innovative development of Russian regions as exemplified by the Republic of Bashkortostan are introduced and discussed in the paper.https://kpfu.ru/uz-eng-phm-2019-2-11.htmlforecasting social developmentrussian regionsneural simulationbayesian assembly of neural networks
spellingShingle R.V. Gubarev
E.I. Dzyuba
Neuromathematics as an effective tool for forecasting social development of Russian regions
Учёные записки Казанского университета: Серия Физико-математические науки
forecasting social development
russian regions
neural simulation
bayesian assembly of neural networks
title Neuromathematics as an effective tool for forecasting social development of Russian regions
title_full Neuromathematics as an effective tool for forecasting social development of Russian regions
title_fullStr Neuromathematics as an effective tool for forecasting social development of Russian regions
title_full_unstemmed Neuromathematics as an effective tool for forecasting social development of Russian regions
title_short Neuromathematics as an effective tool for forecasting social development of Russian regions
title_sort neuromathematics as an effective tool for forecasting social development of russian regions
topic forecasting social development
russian regions
neural simulation
bayesian assembly of neural networks
url https://kpfu.ru/uz-eng-phm-2019-2-11.html
work_keys_str_mv AT rvgubarev neuromathematicsasaneffectivetoolforforecastingsocialdevelopmentofrussianregions
AT eidzyuba neuromathematicsasaneffectivetoolforforecastingsocialdevelopmentofrussianregions