Title of article :
Recommending Friends in Social Networks By Users' Profiles and Using Classification Algorithms
Author/Authors :
Dashtizadeh, Paria Department of Computer Engineering - Ahvaz Branch Islamic Azad University Ahvaz, Iran , Harounabadi, Ali Department of Computer Engineering - Central Tehran Branch Islamic Azad University, Tehran, Iran
Abstract :
Nowadays, social networks are becoming more popular, so the number of their users and their information
is growing accordingly. Therefore, we need a recommender system that uses all kinds of available information to create
highly accurate recommendations. Regarding the general structure of these recommender systems, one criterion is first
chosen to calculate the similarity between users and then people who are assumed to have great similarity are proposed
to each other as friend. These similar criteria can calculate users’ similarity with regard to topologica l structure and
some properties of graph vertices. In this paper, the properties that are required for clustering are extracted from users’
profile. Finally, by combining the similarity criteria of mean measure of divergence (MMD), cosine, and Katz, different
aspects of the problem including graph topology, frequency of user interaction with each other, and normalization of
the same scoring method are considered.
Keywords :
link prediction , users’ profiles , graph clustering , friend recommendation , social network
Journal title :
International Journal of Information and Communication Technology Research