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http://dx.doi.org/10.9728/dcs.2018.19.4.701

Method of Service Curation based on User Log Analysis  

Hwang, Yun-Young (Korea Institute of Science and Technology Information)
Kim, Dou Gyun (Korea Institute of Science and Technology Information)
Kim, Bo-Ram (Korea Institute of Science and Technology Information)
Park, Seong-Eun (Korea Institute of Science and Technology Information)
Lee, Myunggyo (Korea Institute of Science and Technology Information)
Yoon, Jungsun (Korea Institute of Science and Technology Information)
Suh, Dongjun (School of Convergence & Fusion System Engineering, Kyungpook National University)
Publication Information
Journal of Digital Contents Society / v.19, no.4, 2018 , pp. 701-709 More about this Journal
Abstract
Our research team implemented and operated the system by analyzing the membership information and identifying the different preferences for each group and providing the results of the recommendation based on accumulated membership information and activity log data to the individual. The utilization log was followed up. We analyzed how many people use recommended services and analyzed whether there are any factors other than the personalization service algorithm that affect the service utilization of the system with personalization. In addition, we propose recommendation methods based on behavioral changes when incentives are given through analyzing patterns of users' usage according to methods of recommending services and contents that are often used based on analysis contents.
Keywords
Personalization service; Recommendation service utilization; algorithm advancement; Influence analysis on individual service; User analysis;
Citations & Related Records
Times Cited By KSCI : 2  (Citation Analysis)
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