4.6 Article

Neural Collaborative Autoencoder for Recommendation With Co-Occurrence Embedding

Journal

IEEE ACCESS
Volume 9, Issue -, Pages 163316-163324

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2021.3133628

Keywords

Collaboration; Solid modeling; Predictive models; Feature extraction; Context modeling; Social networking (online); Task analysis; Collaborative filtering; autoencoder; co-occurrence embedding; recommendation system

Funding

  1. Science Fund for Outstanding Youth of Xinjiang Uygur Autonomous Region [2021D01E14]
  2. National Science Foundation of China [61867006]
  3. Key Laboratory Open Project of Science and Technology Department of Xinjiang Uygur Autonomous Region
  4. Major Science and Technology Project of Xinjiang Uygur Autonomous Region [2020A03001]
  5. Innovation Project of Sichuan Region [2020YFQ2018]

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This paper proposes a collaborative filtering model based on implicit trust relationships, combining implicit trust information and user-item interaction behavior to address information overload in recommendation systems. By integrating user co-occurrence matrix embedding and collaborative neural recommendation, the NCAR model improves recommendation accuracy, as demonstrated by experiments on four public datasets.
Collaborative filtering is the one of the most successful methods used by recommendation system to solve the information overload problem. Nevertheless, most collaborative filtering only uses explicit rating information to model the user, ignoring the impact of implicit information. In addition, they still utilize inner product to fit user-item interaction behavior, which leads to poor recommendation results. Thus, in this paper, we propose an autoencoder model based on implicit trust relationship between users, where we combine the intrinsic relationship of both the implicit trust information and user-item interaction behavior for collaborative recommendation. Two key challenges emerged in this process: first, how to extract implicit trust information of users, and second, how to model the complex user-item interaction behavior for recommendation. To solve these two challenges, we design a model named the Neural Collaborative Autoencoder for Recommendation with Co-occurrence Embedding (NCAR), which is divided into two parts: (1) the user co-occurrence matrix embedding part; (2) the collaborative neural recommendation part. First, NCAR extracts the user co-occurrence matrix from the rating information. Then, the autoencoder is used to learn the co-occurrence embedding of each user with the correlation regularization method. Finally, this paper employs an interaction prediction module based on a deep neural network to learn the complex interaction behaviors between users and items. Experiments conducted on four public datasets show that the performance of NCAR is significantly better than that of the baseline method.

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