Future Internet (Mar 2021)

A Classification Method for Academic Resources Based on a Graph Attention Network

  • Jie Yu,
  • Yaliu Li,
  • Chenle Pan,
  • Junwei Wang

DOI
https://doi.org/10.3390/fi13030064
Journal volume & issue
Vol. 13, no. 3
p. 64

Abstract

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Classification of resource can help us effectively reduce the work of filtering massive academic resources, such as selecting relevant papers and focusing on the latest research by scholars in the same field. However, existing graph neural networks do not take into account the associations between academic resources, leading to unsatisfactory classification results. In this paper, we propose an Association Content Graph Attention Network (ACGAT), which is based on the association features and content attributes of academic resources. The semantic relevance and academic relevance are introduced into the model. The ACGAT makes full use of the association commonality and the influence information of resources and introduces an attention mechanism to improve the accuracy of academic resource classification. We conducted experiments on a self-built scholar network and two public citation networks. Experimental results show that the ACGAT has better effectiveness than existing classification methods.

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