4.7 Article

Fusing frequent sub-sequences in the session-based recommender system

Journal

EXPERT SYSTEMS WITH APPLICATIONS
Volume 206, Issue -, Pages -

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.eswa.2022.117789

Keywords

Graph neural network; Session-based recommender system; Frequent sub-sequences

Funding

  1. National Natural Science Foun-dation of China [61872062]
  2. National High Technology Re-search and Development Program of China [2018YFB1005100, 2018YFB1005104]
  3. special fund project of science and technology incu-bation and achievement transformation in Neijiang City [2019KJFH005]

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In this research, a new session-based recommender system is proposed, which utilizes both the local and global information of item sequences and considers the importance of frequent sub-sequences. By constructing local and global session graphs and using a gated layer to control their contributions, our method is able to learn accurate session-level and global-level item embeddings.
A session-based recommender system (RS) forecasts the item to be clicked next by taking advantage of the item sequence in the current session. The deep learning models, such as the recurrent neural network (RNN) and the graph neural network (GNN), are recently applied in the session-based recommendation. However, to the best of our knowledge, the existing methods ignore the fusion of the frequent sub-sequences which refer to those item sub-sequences that appear frequently in different sessions. Intuitively, the more frequently an item sequence appears, the more important it could be. In this paper, we propose the frequent sub-sequence modeling (FSM) method, by utilizing both the local and global information of item sequences. More specifically, we use the item sequence in the current session to build a local session graph and the frequent sub-sequences to construct a global session graph. In addition, we design a gated layer to control the contributions of these two session graphs. Our method is capable of learning both the session-level and global-level item embedding, and thus supports accurate predictions. It is tested on four benchmark datasets and the results show that our method is superior to state-of-the-art approaches consistently.

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