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A Space-time Analysis of Global Trade Network Based on SNA

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Published:24 March 2021Publication History

ABSTRACT

Knowledge and globalization are having a profound impact on the global economic system, and international trade is developing towards networking and complexity. The competition of countries with the level of science and technology and innovation ability as the core is becoming more and more intense. The object of global trade is also changed from labor-intensive products and resource-intensive products based on national resource endowment to knowledge-intensive products and technology-intensive products with high added value. Technology trade has become an important driving force of national economic growth. This paper takes the global technology trade as the research theme, from the perspective of high-tech products and technology services, combines big data mining, statistical analysis and other methods to reveal the temporal and spatial evolution law of the global technology trade network. It is concluded that global technology trade is an open and complex system and an important manifestation of economic, scientific and technological links and development between countries and regions. The global technology trade network is a functional spatial complex composed of national regional association system, trade network system and spatial potential difference.

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      • Published in

        cover image ACM Other conferences
        EBIMCS '20: Proceedings of the 2020 3rd International Conference on E-Business, Information Management and Computer Science
        December 2020
        718 pages
        ISBN:9781450389099
        DOI:10.1145/3453187

        Copyright © 2020 ACM

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        • Published: 24 March 2021

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        EBIMCS '20 Paper Acceptance Rate112of566submissions,20%Overall Acceptance Rate143of708submissions,20%
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