PROBABILISTIC AND BEHAVIORAL MODEL OF CAMPUS NETWORK'S USER

Authors

  • E. A. Druzhinin
  • I. V. Shostak
  • A. A. Lysenko

Keywords:

user-click model, task-centric click model (TCM), campus networks, user search-behavior analysis, data browsing

Abstract

The basis of user-click models are considered. Assumptions of the user search-behavior are given. The task-centric click model integration to campus network are made. The usage of probabilistic and behavioral model, which rely on design-engineer class, are considered.

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Published

2017-07-14