Collaborative Recommendations Using Adjusted Product Hierarchy : Methodology and Evaluation

  • Kim Jae Kyeong (School of Business Administration, KyungHee University) ;
  • Park Su Kyung (School of Business Administration, KyungHee University) ;
  • Cho Yoon Ho (Department of Internet Information Systems, Dongyang Technical College) ;
  • Choi Il Young (School of Business Administration, KyungHee University)
  • 발행 : 2002.05.01

초록

Today many companies offer millions of products to customers. They are faced with a problem to choose particular products . In response to this problem a new marking strategy, recommendation has emerged. Among recommendation technologies collaborative filtering is most preferred. But the performance degrades with the number of customers and products. Namely, collaborative filtering has two major limitations, sparsity and scalability. To overcome these problems we introduced a new recommendation methodology using adjusted product hierarchy, grain. This methodology focuses on dimensionality reduction to improve recommendation quality and uses a marketer's specific knowledge or experience. In addition, it uses a new measure in the neighborhood formation step which is the most important one in recommendation process.

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