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BRS cS: a hybrid recommendation model fusing multi-source heterogeneous data

Zhenyan Ji, Chun Yang, Huihui Wang, José Enrique Armendáriz-Íñigo, Marta Arce‐Urriza

2020EURASIP Journal on Wireless Communications and Networking13 citationsDOIOpen Access PDF

Abstract

Abstract Recommendation systems are often used to solve the problem of information overload on the Internet. Many types of data can be used for recommendations, and fusing different types of data can make recommendations more accurate. Most existing fusion recommendation models simply combine the recommendation results from different data instead of fully fusing multi-source heterogeneous data to make recommendations. Furthermore, users’ choices are usually affected by their direct and even indirect friends’ preferences. This paper proposes a hybrid recommendation model BRS c S (an acronym for BPR-Review-Score-Social). It fully fuses social data, score, and review together; uses improved BPR model to optimize the ranking; and trains them in a joint representation learning framework to get the top- N recommendations. User trust model is used to introduce social relationships into the rating and review data, PV-DBOW model is used to process the review data, and fully connected neural network is used to process the rating data. Experiments on Yelp public dataset show that the BRS c S algorithm proposed outperforms other recommendation algorithms such as BRS c , UserCF, and HRS c . The BRS c S model is also scalable and can fuse new types of data easily.

Topics & Concepts

Computer scienceInformation overloadProcess (computing)ScalabilityRecommender systemAcronymRanking (information retrieval)Social mediaData miningMachine learningArtificial intelligenceInformation retrievalWorld Wide WebDatabasePhilosophyOperating systemLinguisticsRecommender Systems and TechniquesAdvanced Bandit Algorithms ResearchAdvanced Graph Neural Networks
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