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Study on the Choice of Strategic Emerging Industries in Gansu Province Based on Multi-level Grey Model

In: Recent Developments in Data Science and Business Analytics

Author

Listed:
  • Zhonghua Luo

    (School of Economics and Business Management, Gansu University of Chinese Medicine)

  • Qi Men

    (School of Economics and Business Management, Gansu University of Chinese Medicine)

  • Lixin Yun

    (School of Economics and Business Management, Gansu University of Chinese Medicine)

Abstract

In the economic transformation period, it is an important realistic choice for local government to accelerate developing its strategic emerging industries and to cultivation them into leading industries for revitalizing local economy and transforming economic increasing mode. In the context of “One Belt And One Road” strategy, how to choose strategic emerging industries will determine its future economic trends and development speed. This paper uses multi-level grey correlation evaluation method, and studies how to select its future strategic emerging industries relying on date of four industries such as health services, processing and manufacturing industry in 2015 Gansu statistical yearbook. This paper can provide the necessary theoretical reference for Gansu province to determine its future emerging industries.

Suggested Citation

  • Zhonghua Luo & Qi Men & Lixin Yun, 2018. "Study on the Choice of Strategic Emerging Industries in Gansu Province Based on Multi-level Grey Model," Springer Proceedings in Business and Economics, in: Madjid Tavana & Srikanta Patnaik (ed.), Recent Developments in Data Science and Business Analytics, chapter 0, pages 113-121, Springer.
  • Handle: RePEc:spr:prbchp:978-3-319-72745-5_12
    DOI: 10.1007/978-3-319-72745-5_12
    as

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