Litcius/Paper detail

Data-Driven Diffusion Recommendation in Online Social Networks for the Internet of People

Diyawu Mumin, Leilei Shi, Lu Liu, John Panneerselvam

2020IEEE Transactions on Systems Man and Cybernetics Systems32 citationsDOIOpen Access PDF

Abstract

Recommendation systems are gaining popularity with the proliferation of the Internet of People (IoP). The popularity and use of online social networks facilitate integrating these social relationships with recommender systems under a single framework of IoP. This article proposes a new approach for item recommendation based on the diffusion method that combines user relationships in social networks with user–item relationships derived from the IoP. Especially, a resource redistribution process is explored in the user–object network that gives mass diffusion a higher recommendation accuracy and heat conduct a greater diversity by considering the social degree of users whilst calculating the user degree in the network. A tuning parameter is introduced to adjust the weight of resources that the objects finally receives from users based on their social relationships. Finally, extensive experiments conducted on the real-world datasets which contain friendship relationships, demonstrate the efficiencies of our proposed method in achieving notable performance improvements in terms of the recommendation accuracy, service diversity, and practical dependability.

Topics & Concepts

PopularityComputer scienceSocial network serviceRecommender systemDependabilityThe InternetSocial network (sociolinguistics)World Wide WebResource (disambiguation)Information retrievalSocial mediaComputer networkSoftware engineeringPsychologySocial psychologyRecommender Systems and TechniquesCaching and Content DeliveryPrivacy-Preserving Technologies in Data