Received:
2019-11-15 | Accepted:
2020-04-22 | Published:
2020-06-30
Title
Method for evaluating the possibility of cluster forming
Abstract
Over the past few years clustering has undergone significant changes as a tool for economic development. Now it is actively positioned as an intensifier of the transition of the current economic model to the digital channel. At the same time issues of ensuring high socio-economic efficiency of individual cluster initiatives are relevant both for Russia and for countries with developed market economies. This is largely due to the emerging crisis in the modern theory and methodology of the cluster approach. The authors consider some existing approaches of clusterization and assessment methods to indicate the disadvantages that do not allow to justify the need to establish an effectively functioning cluster. The method of geometric drawing of cluster objects based on ranking of services provided by its members with subsequent interpretation of the positions of the actual and geometric centers of the cluster is proposed.
Keywords
cluster, clustering center, cluster core, geographical border, main and secondary organizations, ranking, significance, sports and dance cluster, "temporary" cluster, thematic border
JEL classifications
M21
, M40
, G32
URI
http://jssidoi.org/jesi/article/576
DOI
Pages
3145-3157
This is an open access issue and all published articles are licensed under a
Creative Commons Attribution 4.0 International License
References
Abdurakhmanov A.V. (2018). Expert model of regional and industrial cluster. Bulletin of MSEI, №4, pp. 5-9.
Search via ReFindit
Battalova A. A. (2012). Vertically integrated oil company – the core of the cluster. Electronic scientific journal "Oil and gas business”, 2, 368-380.
Search via ReFindit
Bondarenko N. E. (2016). Cluster theory of economic development: the history of formation and formation. International scientific journal "Symbol of science”, 2-2(14), 116-121.
Search via ReFindit
Charykova O. G., & Markova E. S. (2019). Regional clusterization in the digital economy. Regional economy, 15(2), 409-419.
Search via ReFindit
Egorova L. A. (2014). Clusterization of the economy as a promising direction of its development. Concept. Special issue № 05. ART 14545. http://e-koncept.ru/2014/14545.htm
Search via ReFindit
El Idrissi, N. E. A., Ilham Zerrouk, I., Zirari, N., Monni, S. 2020. Comparative study between two innovative clusters in Morocco and Italy. Insights into Regional Development, 2(1), 400-417. http://doi.org/10.9770/IRD.2020.2.1(1)
Search via ReFindit
Gorochnaya V. V. (2019). Cluster formation and innovative security in the regions of the Western Borderlands of Russia: inventory and main trends of development. Regional economy and management: electronic scientific journal. ISSN 1999-2645. 3(59) https://eee-region.ru/article/5911
Search via ReFindit
Karayeva F. E., & Shogenova Z. H. (2017). The choice of enterprises for forming the core of a regional cluster in the conditions of fuzzy information. St. Petersburg economic journal, 1, 91-105.
Search via ReFindit
Ketels, Ch. (2009). Clusters, Cluster Policy, and Swedish Competitiveness in the Global Economy. Harvard Business School and Stockholm School of Economics. Expert report no. 30 to Sweden’s Globalisation Council, p. 66.
Search via ReFindit
Kiseleva A. M., & Smolinski K. A. (2018). Cluster projects in the public-private partnership as a tool for the development of the digital economy. Bulletin of the faculty of management of St. Petersburg state economic University. Scientific journal, Issue 3 (P.1), pp. 53-58.
Search via ReFindit
Kolesnikov A. M., & Khazalia N. A. (2016). The analysis of the notion of "cluster". Approaches to classification. Scientific journal of NIU ITMO. Series "Economics and environmental management", 4, 19-25.
Search via ReFindit
Korableva, O. N., Kalimullina, O. V., & Mityakova, V. N. (2018). Innovation activity data processing and aggregation based on ontological modelling. Paper presented at the 2018 4th International Conference on Information Management, ICIM 2018, 1-4. https://doi.org/10.1109/INFOMAN.2018.8392659
Search via ReFindit
Korchagina I. V., Buvaltseva V. I., & Korchagin R. L. (2016). Foreign experience of forming clusters of small enterprises in the regions: approaches and mechanisms. Economics and modern management: theory and practice. Collection of articles based on the materials of the LXVII international scientific and practical conference, 11(62), 90-99.
Search via ReFindit
Kostenko O. (2017). Identification of agro-industrial clusters using localization coefficients. Problems of management theory and practice, 5, 88-93.
Search via ReFindit
Maltsev Yu. G., & Davankov A. Yu. (2017). Method of cluster core recognition. Izvestiya of higher educational institutions. Ural region, 2, 33-38.
Search via ReFindit
Moskovkin V. M., & Arinella K. (2017). Matrix clusterization as clusterization of matrices of the same dimension. Scientific Bulletin of the Belgorod state University. Series: Economics. informatics, 23(272), 123-127.
Search via ReFindit
Nielsen, Kaspar, & Nielsen, Merete D. (2019). Clusters in the Circular Economy Building Partnerships for Sustainable Transition of SMEs. Printed on sustainable paper according to the principles of The Nordic Swan Ecolabel promoting circular economy. TCI Network, pp. 1-24.
Search via ReFindit
Nikulina O. V., & Yakunina Yu. K. (2011). Model of innovative development based on optimization of clusterization methods of regional economy. Regional Economy: Theory and Practice, 42, 42-49.
Search via ReFindit
Pestunov I. A., Berikov V. B., Kulikova E. A., & Rylov S. A. (2011). Ensemble clustering algorithm for large data arrays. Autometry, 3(47), 49-58.
Search via ReFindit
Petrenko, Y., Vechkinzova, E., & Antonov, V. (2019). Transition from the industrial clusters to the smart specialization of the regions in Kazakhstan. Insights into Regional Development, 1(2), 118-128. https://doi.org/10.9770/ird.2019.1.2(3)
Search via ReFindit
Polishchuk, Yu. M., & Kochergin, G. A. (2011). Use of geoinformation systems for complex analysis of spatial data based on multidimensional clustering. Geoinformatics, 2, 11-15
Search via ReFindit
Tolstova, M. L. (2011). Assessment of the investment potential of the Volga Federal district regions based on the clusterization method. Actual Problems of Economics and Law, 4, 218-221.
Search via ReFindit
Trifonova, N. V., Borovskaya, I. L., Epstein, M. Z. (2018). Analysis of dynamic changes in the stable component (core) of innovation clusters. Engineering education, 23, 152-158.
Search via ReFindit
Turgel, I.D., Bozhko, L.G., & Zinovyeva, E.G. (2019). Cluster approach to organization of special economic zones in Russia and Kazakhstan. R-ECONOMY, 5(2), 71-78.
Search via ReFindit