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Detecting smartphone user habits using sequential pattern analysis

초록

영어

Recently, the study of smart phone user habits has become a highly focused topic due to the rapid growth of the smart phone market. Indeed, sequential pattern analysis methods were efficiently used for web-based user habit mining long time ago. However, by means of simulations, it has been observed that these methods might fail for smart phone-based user habit mining. In this paper, we propose a novel approach that leads to a considerably increased performance of the traditional sequential pattern analysis methods by reasonably cutting off each chronological sequence of user logs on a device into shorter ones, which represent the sequential user activities in various periods of a day.

목차

Abstract
 1. Introduction
 2. Related works
 3. A method for detecting frequent sequential log patterns
 4. Conclusion
 References

저자정보

  • Lu Dang Nhac Academy of Journalism and Communication
  • Nguyen Thu Trang University of Engineering and Technology, Vietman National University in Hanoi
  • Nauyen Thi Hau University of Engineering and Technology, Vietman National University in Hanoi
  • Nguyen Ha Nam University of Engineering and Technology, Vietman National University in Hanoi
  • Gyoo Seok Choi Departmant of Computer Science, Chungwoon University

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