RWESA-GNNR: Fusing Random Walk Embedding and Sentiment Analysis for Graph Neural Network Recommendation

Authors

  • Junlin Gu College of Computer, Jiangsu Vocational College of Electronics and Information, Huai’an 223003, China
  • Yihan Xu College of Computer, Jiangsu Vocational College of Electronics and Information, Huai’an 223003, China
  • Weiwei Liu College of Computer, Jiangsu Vocational College of Electronics and Information, Huai’an 223003, China

DOI:

https://doi.org/10.5755/j01.itc.53.1.33495

Keywords:

recommendation system, graph neural network, data mining, random walk, sentiment analysis

Abstract

A graph neural network-based recommendation system treats the relationship between user items as a graph, and achieves deep feature mining by modelling the graph nodes. However, the complexity of the features of graph neural network-based recommendation systems brings poor interpretability and suffers from data sparsity problems. To address the above problems, a graph convolutional neural network recommendation model (RWESA-GNNR) based on random walk embedding combined with sentiment analysis is proposed. Firstly, a random walk-based matrix factorization is designed as the initial embedding. Secondly, the user and item nodes are modelled using a convolutional neural network with an injected attention mechanism. Then, sentiment analysis is performed on the review text, and attention mechanism is introduced to fuse text sentiment features and semantic features. Finally, node features and text features are aggregated to generate recommendation results. The experimental results show that our proposed algorithm outperforms traditional recommendation algorithms and other graph neural network-based recommendation algorithms in terms of recommendation results, with an improvement of about 2.43%-5.75%.

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Published

2024-03-22

Issue

Section

Articles