LINKZONE SOCIAL NETWORKING RECOMMENDER SYSTEM

Authors

  • DR. KOTRAPPASIRBI Professor in Computer Science & Engineering, B.E, M.S, M Tech(CSE), Ph.D(CSE), MISTE KLE's Dr MSS College of Engg., & Technology, Belagavi, India
  • DR. KSHAMA V. KULHALLI Vice-Principal & HOD IT D.Y. Patil College of Engineering and Technology, Kolhapur-416006
  • MR. ABHIJIT J. PATANKAR Research Scholar, Computer Science and Engineering, VTU, Belgaum, Karnataka

Keywords:

social networking, semantic, recommendation, Linkzone

Abstract

Existing social networking services recommend friends to users based on their social graphs, which may not be the most appropriate to reflect a user’s preferences on friend selection in real life. In this paper, we present Linkzone, a novel semantic-based friend recommendation system for social networks, which recommends friends to users based on their life styles instead of social graphs. By taking advantage of sensor-rich smartphones, Linkzone discovers life styles of users from user-centric sensor data, measures the similarity of life styles between users, and recommends friends to users if their life styles have high similarity. Inspired by text mining, we model a user’s daily life as life documents, from which his/her life styles are extracted by using the Latent Dirichlet Allocation algorithm. We further propose a similarity metric to measure the similarity of life styles between users, and calculate users’ impact in terms of life styles with a friend-matching graph. Upon receiving a request, Linkzone returns a list of people with highest recommendation scores to the query user. Finally, Linkzone integrates a feedback mechanism to further improve the recommendation accuracy.

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Published

2021-02-20

Issue

Section

Articles

How to Cite

LINKZONE SOCIAL NETWORKING RECOMMENDER SYSTEM. (2021). JournalNX - A Multidisciplinary Peer Reviewed Journal, 105-108. https://repo.journalnx.com/index.php/nx/article/view/2040