The valuing of the indicator of a regional industrial development: The fuzzy logic approach
- 1 May 2016
- conference paper
- Published by Institute of Electrical and Electronics Engineers (IEEE)
- p. 545-547
- https://doi.org/10.1109/scm.2016.7519842
Abstract
The article discusses the possibility of valuing of the aggregated industrial development level index for the region by fuzzy-set method. Input variables were determined based on System of regional indicators (SRI) in the component of the ≪Industry and Entrepreneurship≫. In the study identified the factors influencing the industrial development level of the region, formed the linguistic scale for evaluation of an aggregated index, and calculated the index for the Murmansk and the Yamalo-Nenets District of Russia. Assessment and comparison of the industrial development level of regions was made. The indicator can be used to monitor the industrial development of the regions and decision making in development of regional economic policy.Keywords
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