IEEE Access (Jan 2023)

A Graph Positional Attention Network for Session-Based Recommendation

  • Liyan Dong,
  • Guangtong Zhu,
  • Yuequn Wang,
  • Yongli Li,
  • Jiayao Duan,
  • Minghui Sun

DOI
https://doi.org/10.1109/ACCESS.2023.3235353
Journal volume & issue
Vol. 11
pp. 7564 – 7573

Abstract

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The main idea of a session-based recommendation system is to model the user’s historical click sequence and then summarize user preferences and predict the items the user will interact with. The session recommendation model based on graph neural networks has attracted much attention in recent years because it can accurately obtain the local relationship between items. However, the traditional session recommendation model based on graph neural Networks lack the use of user’s higher-order features or fail to address the impact of item position information on the current session, which are both critical to the recommendation system. In addition, some models proposed the position information while neglects the click frequency information. We propose a graph network recommendation model called GPAN based on position attention in response to the abovementioned problems. Specifically, we propose a novel high-low order session perceptron that uses the perceptron to model undirected and directed graphs separately to obtain high and low order item representations in a session. For position information, we designed a position layer to calculate independently. Finally, the user’s short-term preference and long-term preference are aggregated to obtain the recommendation sequence. The results through a large number of experiments on three real datasets show that the performance of the proposed GPAN model is the best.

Keywords