DOI QR코드

DOI QR Code

주거의사결정지원을 위한 임베딩 기반 협력필터링 추천시스템

Embedding-based Collaborative Filtering Recommender System for Supporting Housing Decision Making

  • 김재희 ((주)에코시안 기술연구소) ;
  • 장선우 ((주)종합건축사사무소가람건축) ;
  • 이득영 ((주)종합건축사사무소가람건축) ;
  • 전한종 (한양대 건축학과)
  • 투고 : 2020.09.23
  • 심사 : 2020.11.09
  • 발행 : 2020.11.30

초록

In the era of the 4th Industrial Revolution, a user-customized service recommendation system has been gaining attention in the terms of ultra-personalization, which collects and analyzes customer information in real time to increase satisfaction through reflecting the user's preference. In line with this global trend, various studies have been conducted to reflect the user's perspective through the analysis of housing preferences to support the housing decision-making process and improve service satisfaction. Unlike the previous studies that analyze the groups' housing preferences according to demographic and sociological characteristics, this study subdivided the analysis targets into the individuals to enable the derivation of housing preferences and the recommendation of customized housing alternatives. The purpose of this paper is to analyze the preferences of individual users by establishing an embedding-based residential recommendation system. Through this, it was intended to support a custom housing decision-making process from the individual user's point of view and to suggest one way to improve design quality as well as increase satisfaction in the architectural planning and design phase from the supplier's point of view.

키워드

과제정보

본 연구는 2020년도 국토교통부 도시건축 개발사업의 연구비지원(20AUDP-B127891-04)에 의해 수행되었습니다.

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