پديدآورندگان :
Ghorbani Moeeneh Payam Noor University, Rey Center , HeydaryNejad MohammadReza , Assadat Afzali Golshan AmirKabir University of Technology
كليدواژه :
recommender system , social network , context aware , collaborative filtering
چكيده لاتين :
Nowadays, social networks are widely used by everyone. So, it is necessary to do
appropriate and situation aware activities in these networks to gain benefits.
In this research, a context aware recommender system has modeled for using in social
networks. This system makes its recommendations for user based on behavior and
activities of her friends in the same situation in social network. In other word, this modeled
recommender system uses collaborative filtering algorithm. All the connections of user in
social network, containing direct and indirect, are considered for recommending by
recommender system; but, based on connection type and its distance to user, proportional
factor is assigned. For example, the factor of friends of user is 1, and the factor of friends
of friends is ½.
At last, by implementing this model on an appropriate data set using data-mining and
neural networks techniques and then, calculating its precision, the usefulness of its
recommendations are evaluated.