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Section D: IT Managements and Services

Weighted Mining Frequent Pattern based Customer’s RFM Score for Personalized u-Commerce Recommendation System

원문정보

Young Sung Cho, Song Chul Moon

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초록

영어

This paper proposes a new weighted mining frequent pattern based on customer’s RFM(Recency, Frequency, Monetary) score for personalized u-commerce recommendation system under ubiquitous computing. An existing recommendation system using traditional mining has the problem, such as delay of processing speed from a cause of frequent scanning a large data, considering equal weight value of every item, and accuracy as well. In this paper, to solve these problems, it is necessary for us to extract the most frequently purchased data from whole data, to consider the weight/importance of attribute of item in order to forecast frequently changing trends by emphasizing the important items with high purchasability and to improve the accuracy of personalized u-commerce recommendation. To verify improved performance, we make experiments with dataset collected in a cosmetic internet shopping mall.

목차

Abstract
 I. INTRODUCTION
 RELATED WORKS
  RFM
  ASSOCIATION RULES
  MINING FREQUENT ITEMSETS USING FP-TREE
 OUR PROPOSAL FOR A PERSONALIZED U-COMMERCE RECOMMENDATION SYSTEM.
 THE ENVIRONMENT OF IMPLEMENTATION AND EXPERIMENT & EVALUATION
 CONCLUSION
 ACKNOWLEDGMENT
 REFERENCES

저자정보

  • Young Sung Cho Department of Computer Science, Chungbuk National University, Cheongju, Korea
  • Song Chul Moon Department of Computer Science, Namseoul University, Cheonan-city, Korea

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