📞 +91-7667918914 | ✉️ ijarcce@gmail.com
IJARCCE Logo
International Journal of Advanced Research in Computer and Communication Engineering A monthly Peer-reviewed & Refereed journal
ISSN Online 2278-1021ISSN Print 2319-5940Since 2012
IJARCCE adheres to the suggestive parameters outlined by the University Grants Commission (UGC) for peer-reviewed journals, upholding high standards of research quality, ethical publishing, and academic excellence.
← Back to VOLUME 5, ISSUE 11, NOVEMBER 2016

Implementation of Friend Recommendation System for Social Networks

Anuja Shahane, Prof. Rucha Galgali

DOI: 10.17148/IJARCCE.2016.51151

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 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, Friend Recommendation system 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 Collaborative Filtering with threshold 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, Friend Recommendation system returns a list of people with highest recommendation scores to the query user. Finally, Friend Recommendation system integrates a feedback mechanism to further improve the recommendation accuracy. We have implemented Friend Recommendation system on the Android-based smartphones, and evaluated its performance on both small-scale experiments and large-scale simulations. The results show that the recommendations accurately reflect the preferences of users in choosing friends.



Keywords: Mobile Social Networks, Recommendation friend, Privacy, Collaborative Filtering

How to Cite:

[1] Anuja Shahane, Prof. Rucha Galgali, “Implementation of Friend Recommendation System for Social Networks,” International Journal of Advanced Research in Computer and Communication Engineering (IJARCCE), DOI: 10.17148/IJARCCE.2016.51151