4.6 Article

Personality-Aware Product Recommendation System Based on User Interests Mining and Metapath Discovery

期刊

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCSS.2020.3037040

关键词

Big-five model; personality computing; product recommendation; recommendation system; social networks; social computing; user interest mining; user modeling

资金

  1. National Natural Science Foundation of China [61872038]
  2. Fundamental Research Funds for the Central Universities [FRF-BD-18-016A]

向作者/读者索取更多资源

The article proposes Meta-Interest, a personality-aware product recommendation system that predicts user interests and associated items by analyzing topical interests, aiming to alleviate the cold-start issue and recommendation redundancy seen in legacy recommendation systems. Results indicate that the proposed method can improve the precision and recall of recommendations, particularly in cold-start scenarios, compared to recent recommendation methods like deep learning-based and session-based systems.
A recommendation system is an integral part of any modern online shopping or social network platform. The product recommendation system as a typical example of the legacy recommendation systems suffers from two major drawbacks: recommendation redundancy and unpredictability concerning new items (cold start). These limitations take place because the legacy recommendation systems rely only on the user's previous buying behavior to recommend new items. Incorporating the user's social features, such as personality traits and topical interest, might help alleviate the cold start and remove recommendation redundancy. Therefore, in this article, we propose Meta-Interest, a personality-aware product recommendation system based on user interest mining and metapath discovery. Meta-Interest predicts the user's interest and the items associated with these interests, even if the user's history does not contain these items or similar ones. This is done by analyzing the user's topical interests and, eventually, recommending the items associated with the user's interest. The proposed system is personality-aware from two aspects; it incorporates the user's personality traits to predict his/her topics of interest and to match the user's personality facets with the associated items. The proposed system was compared against recent recommendation methods, such as deep-learning-based recommendation system and session-based recommendation systems. Experimental results show that the proposed method can increase the precision and recall of the recommendation system, especially in cold-start settings.

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