애스크로AIPublic Preview
← 학술논문 검색
학술논문대한산업공학회지2010.09 발행KCI 피인용 2

차원 감소 기법을 이용한 전자 상거래 추천 시스템

Development of a Recommender System for E-Commerce Sites Using a Dimensionality Reduction Technique

김용수(경기대학교); 염봉진(한국과학기술원); 김도현(The State University of New Jersey)

36권 3호, 193~202쪽

초록

The recommender system is a typical software solution for personalized services which are now popular in e-commerce sites. Most of the existing recommender systems are based on customers’ explicit rating data on items (e.g., ratings on movies), and it is only recently that recommender systems based on implicit ratings have been proposed as a better alternative. Implicit ratings of a customer on those items that are clicked but not purchased can be inferred from the customer’s navigational and behavioral patterns. In this article, a dimensionality reduction (DR) technique is newly applied to the implicit rating-based recommender system, and its effectiveness is assessed using an experimental e-commerce site. The experimental results indicate that the performance of the proposed approach is superior or at least similar to the conventional collaborative filtering (CF)-based approach unless the number of recommended products is ‘large.’ In addition, the proposed approach requires less memory space and is computationally more efficient.

Abstract

The recommender system is a typical software solution for personalized services which are now popular in e-commerce sites. Most of the existing recommender systems are based on customers’ explicit rating data on items (e.g., ratings on movies), and it is only recently that recommender systems based on implicit ratings have been proposed as a better alternative. Implicit ratings of a customer on those items that are clicked but not purchased can be inferred from the customer’s navigational and behavioral patterns. In this article, a dimensionality reduction (DR) technique is newly applied to the implicit rating-based recommender system, and its effectiveness is assessed using an experimental e-commerce site. The experimental results indicate that the performance of the proposed approach is superior or at least similar to the conventional collaborative filtering (CF)-based approach unless the number of recommended products is ‘large.’ In addition, the proposed approach requires less memory space and is computationally more efficient.

발행기관:
대한산업공학회
분류:
산업공학

AI 법률 상담

이 논문의 주제에 대해 더 알고 싶으신가요?

460만+ 법률 자료에서 관련 판례·법령·해석례를 찾아 답변합니다

AI 상담 시작
차원 감소 기법을 이용한 전자 상거래 추천 시스템 | 대한산업공학회지 2010 | AskLaw | 애스크로 AI