Multi-Dimensional Recommendation Scheme for Social Networks Considering a User Relationship Strength Perspective
DOI:
https://doi.org/10.31577/cai_2020_1-2_105Keywords:
Recommendation system, social network, user relationship strength, user interest, entity similarityAbstract
Developing a computational method based on user relationship strength for multi-dimensional recommendation is a significant challenge. The traditional recommendation methods have relatively low accuracy because they lack considering information from the perspective of user relationship strength into the recommendation algorithm. User relationship strength reflects the degree of closeness between two users, which can make the recommendation system more efficient between users in pairs. This paper proposes a multi-dimensional comprehensive recommendation method based on user relationship strength. We take three main factors into consideration, including the strength of user relationship, the similarity of entities, and the degree of user interest. First, we introduce a novel method to generate a user candidate set and an entity candidate set by calculating the relationship strength between two users and the similarity between two entities. Then, the algorithm will calculate the user interest degree of each user in the user candidate set to each entity in the entity candidate set, if the user interest degree is larger than or equal to a threshold, this particular entity will be recommended to this user. The performance of the proposed method was verified based on the real-world social network dataset and the e-commerce website dataset, and the experimental result suggests that this method can improve the recommendation accuracy.Downloads
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Published
2020-02-29
How to Cite
Zhang, B., Zhang, Y., Bai, Y., Lian, J., & Li, M. (2020). Multi-Dimensional Recommendation Scheme for Social Networks Considering a User Relationship Strength Perspective. Computing and Informatics, 39(1-2), 105–140. https://doi.org/10.31577/cai_2020_1-2_105
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Special Section Articles