Abstract
The affluence of signed social networks (SSNs) has attracted the sight of most of the researchers to explore and examine these networks. Besides the notion of friendship, signed social networks also deals with the idea of antagonism among the users in the network. The two fundamental theories of these networks are social balance theory and status theory. Based on the idea of social status of individuals, status theory is suitable for directed signed social networks (DSSNs). Most of the work dedicated to friends recommender system (FRS) is based on social balance theory, grounded on the concept of Friend-Of-A-Friend, which limits to undirected signed social networks and thus, overlooks the impact of direction-link information. In this paper, a friends recommender system based on status (StatusFRS) is proposed to have improved and meaningful friends recommendations. Our contribution is threefold. Initially, by employing genetic algorithm, signed overlapping communities are formed. Further, in order to recommend relevant friends, status of each node in overlapping communities is computed. Finally, on the basis of status, a recommended list of friends is generated for each user. Experiments are performed on real world dataset of Epinions to evaluate the performance of the proposed model.
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Girdhar, N., Bharadwaj, K.K. (2019). Friends Recommender System Based on Status (StatusFRS) for Users of Overlapping Communities in Directed Signed Social Networks. In: Malik, H., Srivastava, S., Sood, Y., Ahmad, A. (eds) Applications of Artificial Intelligence Techniques in Engineering. Advances in Intelligent Systems and Computing, vol 698. Springer, Singapore. https://doi.org/10.1007/978-981-13-1819-1_22
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DOI: https://doi.org/10.1007/978-981-13-1819-1_22
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