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Context-Similarity Collaborative Filtering Recommendation

Hiep Xuan Huynh, Nghia Quoc Phan, Nghi Mong Pham, Van-Huy Pham, Lê Hoàng Sơn, Mohamed Abdel‐Basset, Mahmoud M. Ismail

2020IEEE Access26 citationsDOIOpen Access PDF

Abstract

This article proposes a new method to overcome the sparse data problem of the collaborative filtering models (CF models) by considering the homologous relationship between users or items calculated on contextual attributes when we build the CF models. In the traditional CF models, the results are built only based on data from the user's ratings for items. The results of the proposed models are calculated on two factors: (1) the similar factors based on rating values; (2) the similar factors based on contextual attributes. The findings from the experimentation on two datasets DePaulMovie and InCarMusic, show that the proposed models have higher accuracy than the traditional CF models.

Topics & Concepts

Collaborative filteringSimilarity (geometry)Computer scienceRecommender systemContext (archaeology)Data miningData modelingMachine learningArtificial intelligenceInformation retrievalDatabaseImage (mathematics)BiologyPaleontologyRecommender Systems and TechniquesDigital Marketing and Social MediaHuman Mobility and Location-Based Analysis
Context-Similarity Collaborative Filtering Recommendation | Litcius