Regional Economics: Theory and Practice
 

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Digital econometric modeling of gross regional product and manufacturing industries of the region with a high value of petrochemical cluster

Vol. 17, Iss. 8, AUGUST 2019

Received: 28 March 2019

Received in revised form: 27 April 2019

Accepted: 22 May 2019

Available online: 15 August 2019

Subject Heading: SUSTAINABLE DEVELOPMENT OF REGIONS

JEL Classification: C01, R12, R15

Pages: 1490–1510

https://doi.org/10.24891/re.17.8.1490

Beilin I.L. Kazan (Volga Region) Federal University (KFU), Kazan, Republic of Tatarstan, Russian Federation
i.beilin@rambler.ru

https://orcid.org/0000-0002-5878-4915

Subject This article explores the impact of the petrochemical cluster on the region's gross regional product and manufacturing.
Objectives The article aims to conduct a digital econometric modeling of gross regional product and manufacturing industries of the region with a budget revenue generating petrochemical cluster, considering the Republic of Tatarstan as a case study.
Methods For the study, I used econometric modeling and simplex optimization of explanatory variables.
Results The article shows the possibilities of using digital technologies based on Internet services, which help create multiple regression and simplex optimization models on-line. These models determine the ratios of the most significant factors of the petrochemical sector in the structure of the regional economic system.
Conclusions The regional economic system, which depends heavily on the petrochemical sector's activities should be more flexible concerning its budget adjustments entering.

Keywords: econometric modeling, regional economy, petrochemical cluster, digital economy

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