4.7 Article

Neural Graph for Personalized Tag Recommendation

Journal

IEEE INTELLIGENT SYSTEMS
Volume 37, Issue 1, Pages 51-59

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/MIS.2020.3040046

Keywords

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Funding

  1. Natural Science Foundation of the Higher Education Institutions of Jiangsu Province [17KJB520028]
  2. Tongda College of Nanjing University of Posts and Telecommunications [XK203XZ18002]
  3. Qing Lan Project of Jiangsu Province
  4. Doctoral Scientific Research Foundation of Hubei University of Technology [BSQD2019026]

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This article proposes a graph neural networks boosted personalized tag recommendation model to better learn the preferences and attribute features of entities. Additionally, a lightweight graph neural networks boosted personalized tag recommendation model is also proposed, and experimental results demonstrate that these models are more effective compared to traditional methods.
Traditional personalized tag recommendation methods cannot guarantee that the coupling relationships hidden in the interactions among entities are effectively encoded in the process of learning the representations of entities, resulting in insufficient expressive capacity for characterizing the preferences or attributes of entities. In this article, we first propose a graph neural networks boosted personalized tag recommendation model, namely NGTR, which integrates the graph neural networks into the pairwise interaction tensor factorization model. Specifically, we exploit the graph neural networks to capture the coupling relationships and integrate the coupling relationships into the learning of representations of entities by transmitting and assembling the representations of neighbors along the interaction graphs. In addition, we also propose a light graph neural networks boosted personalized tag recommendation model, namely LNGTR. Different from NGTR, our proposed LNGTR model removes feature transformation and nonlinear activation components as well as adopts the weighted sum of the embeddings learned at all layers as the final embedding. Experimental results on real world datasets show that our proposed personalized tag recommendation models outperform the traditional tag recommendation methods.

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