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Assessment of innovative development potential of a macroregion within the multilevel clustering model
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The object of this research is the potential of innovative development of Volga Region. The subject of this research is assessment of the processes of innovative transformation of economic systems of Volga Region. Special attention is given to the analysis of peculiarities of spatial distribution of the potential for the development of innovative economy in the context of cluster policy. The author examines the dynamics of cluster formation in the Russian Federation and Volga Federal District, as well as the level of institutional development of the clusters formed in the Volga Region. Based on the previous research, the geographical zones of Volga Region are classified by the author into macroregions, districts, and interregional clusters; on each level of the proposed multilevel model can be determined the leading region and lagging regions. For assessing the innovative transformation of economic systems of Volga Region, the author developed the methodology for comprehensive analysis of innovative development potential of the regions. The outcome Index of innovative development potential of the region (IRIDP) is formed on the basis of four subindexes: index of economic potential of innovative development (IEP-1); index of human resource potential of innovative development (IHRP-2); index of financial potential of innovative development (IFP-3); index of scientific and technological potential of innovative development (ISTP-4). In the course of analysis of the processes of clusterization of the economy of Volga Region, the author determined a significant differentiation of economic space from the perspective of institutionalization of clusters. Nonuniformity of distribution of the clusters by regions, as well as differences in the level of their development, are substantiated by the objective economic-geographical prerequisites and by the performance regional authorities within the framework of federal cluster development projects. The formulated conclusions can serve as the foundation for the formation of spatial contours and vectors of a new stage of clusterization of the economy of Volga Region; its implementation of should consider the complementary nature of innovative and cluster activity of the regions.
Title: Assessment of innovative development potential of a macroregion within the multilevel clustering model
Description:
The object of this research is the potential of innovative development of Volga Region.
The subject of this research is assessment of the processes of innovative transformation of economic systems of Volga Region.
Special attention is given to the analysis of peculiarities of spatial distribution of the potential for the development of innovative economy in the context of cluster policy.
The author examines the dynamics of cluster formation in the Russian Federation and Volga Federal District, as well as the level of institutional development of the clusters formed in the Volga Region.
Based on the previous research, the geographical zones of Volga Region are classified by the author into macroregions, districts, and interregional clusters; on each level of the proposed multilevel model can be determined the leading region and lagging regions.
For assessing the innovative transformation of economic systems of Volga Region, the author developed the methodology for comprehensive analysis of innovative development potential of the regions.
The outcome Index of innovative development potential of the region (IRIDP) is formed on the basis of four subindexes: index of economic potential of innovative development (IEP-1); index of human resource potential of innovative development (IHRP-2); index of financial potential of innovative development (IFP-3); index of scientific and technological potential of innovative development (ISTP-4).
In the course of analysis of the processes of clusterization of the economy of Volga Region, the author determined a significant differentiation of economic space from the perspective of institutionalization of clusters.
Nonuniformity of distribution of the clusters by regions, as well as differences in the level of their development, are substantiated by the objective economic-geographical prerequisites and by the performance regional authorities within the framework of federal cluster development projects.
The formulated conclusions can serve as the foundation for the formation of spatial contours and vectors of a new stage of clusterization of the economy of Volga Region; its implementation of should consider the complementary nature of innovative and cluster activity of the regions.
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