Analysis and forecast of competitiveness of new industrial countries
Smirnov V.V.1, Osipov D.G.1, Babaeva A.A.1, Grigoreva E.V.1, Perfilova E.F.1
1 Чувашский государственный университет им. И.Н. Ульянова
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Journal paper
Creative Economy (РИНЦ, ВАК)
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Volume 12, Number 9 (September 2018)
Indexed in Russian Science Citation Index: https://elibrary.ru/item.asp?id=36315081
Cited: 8 by 06.02.2021
Abstract:
The subject of the study is the competitive advantages of the new industrial countries - India, Indonesia, China, Malaysia, Singapore, Thailand, Philippines, South Korea, Argentina, Brazil, Mexico, Tunisia, Cyprus, Turkey and Hong Kong. The analysis and forecast of the dynamics of the development of new industrial countries with the estimation of technological rates of growth (TGR) of a set of interdependent indicators were made in the article: high-tech exports, research and development costs, the number of applications for trademarks, the number of patent applications (non-residents and residents), industrial design non-residents and residents), public expenditure on education. As a result of the TGR analysis of the newly industrialized countries, the competitive advantages of TGR2006-2016 are revealed: Tunisia (high-tech exports and industrial design (non-residents)), India (high-tech exports), Thailand (research and development costs and number of patent applications (non-residents), China number of applications for trademarks and patent applications (residents)), Indonesia (industrial design (residents), Turkey (public expenditure on education), TGR2006-2020: Singapore and India (high-tech exports), Tile (the number of applications for trademarks), Cyprus (the number of patent applications (residents)), Tunisia (industrial design (non-residents)), Indonesia (industrial design (residents) ), Turkey (public spending on education).
Keywords: competitive advantages, forecast, factor analysis, technological development, growth rates, new industrial countries
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