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한국 자동차산업의 기업간 거래관계에 의한 지리적 네트워크 구조 분석

Analysis of Geographic Network Structure by Business Relationship between Companies of the Korean Automobile Industry

  • 김혜림 (경상국립대학교 도시공학과) ;
  • 문태헌 (경상국립대학교 도시공학과)
  • KIM, Hye-Lim (Dept. of Urban Engineering, Gyeongsang National University) ;
  • MOON, Tae-Heon (Dept. of Urban Engineering, ERI. Gyeongsang National University)
  • 투고 : 2021.08.30
  • 심사 : 2021.09.17
  • 발행 : 2021.09.30

초록

2021년 7월 UNCTAD가 우리나라를 선진국으로 분류할 정도로 우리나라가 발전하는 성과가 있었다. 그러나 급변하는 글로벌 경제에 대응하기 위해서는 국내 산업생태계를 연구하여 끊임없이 변화시키고 성장을 위한 전략을 마련해야 한다. 그 중 하나가 기업간 네트워크를 강화하는 것이며, 본 연구는 기업 간 거래 데이터 구득이 가능한 자동차산업을 대상으로 공간적인 산업 네트워크를 분석하였다. 데이터는 295개의 기업 데이터(노드)와 607개의 거래 관계 데이터(링크)를 활용하였다. 기업의 주소지를 지오코딩하여 공간상 분포를 확인한 결과, 자동차산업 관련 기업은 수도권과 동남권에 집중 분포하고 있었다. 연결중심성, 매개중심성, 근접중심성, 위세중심성 등을 통해 노드의 중요도를 측정하고, 밀도, 거리, 커뮤니티 탐지, 동류성 및 이류성을 파악하여 네트워크 구조를 확인하였다. 그 결과, 4가지 노드 중요도에서 상위 15위 기업은 완성차기업 중에서는 현대자동차, 기아자동차, 한국지엠 3개의 기업이 공통적으로 포함되고, 상위 15위 기업은 주로 수도권에 입지하고 있다. 규모 면에서 연결중심성과 매개중심성은 대부분 종업원 수가 1,000명 이상인 큰 기업이고, 근접중심성과 위세중심성은 완성차기업을 제외하면 대개 종업원 수가 500명 이하인 기업이 상위 15위 안에 포함되었다. 전체적인 네트워크의 구조는 밀도는 0.01390522, 노드 간 평균거리는 3.422481로 나타났으며, 빠른탐욕알고리즘으로 커뮤니티 탐지를 실시한 결과, 최종적으로 11개의 커뮤니티가 도출되었다.

In July 2021, UNCTAD classified Korea as a developed country. After the Korean War in the 1950s, economic development was promoted despite difficult conditions, resulting in epoch-making national growth. However, in order to respond to the rapidly changing global economy, it is necessary to continuously study the domestic industrial ecosystem and prepare strategies for continuous change and growth. This study analyzed the industrial ecosystem of the automobile industry where it is possible to obtain transaction data between companies by applying complexity spatial network analysis. For data, 295 corporate data(node data) and 607 transaction data (link data) were used. As a result of checking the spatial distribution by geocoding the address of the company, the automobile industry-related companies were concentrated in the Seoul metropolitan area and the Southeastern(Dongnam) region. The node importance was measured through degree centrality, betweenness centrality, closeness centrality, and eigenvector centrality, and the network structure was confirmed by identifying density, distance, community detection, and assortativity and disassortivity. As a result, among the automakers, Hyundai Motor, Kia Motors, and GM Korea were included in the top 15 in 4 indicators of node centrality. In terms of company location, companies located in the Seoul metropolitan area were included in the top 15. In terms of company size, most of the large companies with more than 1,000 employees were included in the top 15 for degree centrality and betweenness centrality. Regarding closeness centrality and eigenvector centrality, most of the companies with 500 or less employees were included in the top 15, except for automakers. In the structure of the network, the density was 0.01390522 and the average distance was 3.422481. As a result of community detection using the fast greedy algorithm, 11 communities were finally derived.

키워드

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