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Seoul Local Brand Alley Commercial Area Recommendation System Design Using Machine Learning

머신러닝 기반 서울시 로컬브랜드 골목상권 추천시스템 설계

  • 김지연 (서울여자대학교 디지털미디어학과) ;
  • 장효선 (서울여자대학교 소프트웨어융합과) ;
  • 박민서 (서울여자대학교 데이터사이언스학과)
  • Received : 2022.11.27
  • Accepted : 2023.01.09
  • Published : 2023.01.31

Abstract

According to data released by the Covid 19 Self-Employed Emergency Response Committee, 95.6% of small business sales due to Covid 19 have decreased over the past two years, and the damage has further increased due to social distancing for quarantine. However, as all social distancing guidelines have rebeen lifted, and the commercial district has been revitalized, the Seoul Metropolitan Government is pushing for a project to foster local brand commercial districts so that small business owners or prospective founders who have closed their businesses due to the prolonged COVID-19. Therefore, this study propose the model that recommends alley commercial districts suitable for founders among the five alley commercial districts selected for the project to foster local brand commercial districts in Seoul. The Seoul Metropolitan Government's local brand alley commercial recommendation system recommends major population age groups and major industries in the commercial district by combining the population perspective model using Xgboost and the commercial district characteristic model using Decision Tree.

코로나 19 자영업자비상대책위원회가 발표한 자료에 따르면 지난 2년 동안 코로나19로 인한 소상공인 매출의 95.6%가 감소했으며, 방역을 위한 사회적 거리두기로 인해 피해는 더욱 커졌다. 하지만 최근 사회적 거리두기 지침이 전부 해제되고 상권이 활기를 띠면서 서울시는 코로나19의 장기화로 한계에 부딪혀 폐업하였던 소상공인이나 예비 창업자를 위해 안정적으로 사업을 재기할 수 있도록 로컬브랜드 상권 육성사업을 추진하고 있다. 따라서 본 연구는 서울시 로컬브랜드 상권 육성사업의 대상으로 선정된 골목상권 5곳 중 창업자에게 적합한 골목상권을 추천하는 모델을 설계했다. 이 연구의 서울시 로컬브랜드 골목상권 추천시스템은 Xgboost를 이용한 인구관점 모델과 Decision tree를 이용한 상권특징 모델을 합쳐 해당 상권의 주요 인구 연령대와 주요 업종을 추천한다.

Keywords

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