Recommendation System for Find Friend on Social Networks.
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Abstract
Social networks have become an unlimited source of information, for that several applications have been proposed to mine information from social networks such as: recommender systems. The rapidity and scalability of such a recommender algorithm is as important as the actual logic behind the algorithm because such algorithms generally run over a "huge" graph and implementing these normally would probably take a lot of time for recommending items even if there is one user. The basic idea of recommendation system is to recommend items to users. In this paper various recommender systems are classified are discussed. This paper focuses on providing the overview about the various categories of recommendation techniques developed till now. This paper we present review on recommendation system for find friend on social networks.
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