Graph Neural Networks: a bibliometrics overview
- URL: http://arxiv.org/abs/2201.01188v1
- Date: Mon, 3 Jan 2022 07:37:40 GMT
- Title: Graph Neural Networks: a bibliometrics overview
- Authors: Abdalsamad Keramatfar, Mohadeseh Rafiee, Hossein Amirkhani
- Abstract summary: The study aims to evaluate GNN research trend, both quantitatively and qualitatively.
The most prolific or impactful institutions are found in the United States, China, and Canada.
The application of graph convolutional networks and attention mechanism are now among hot topics of GNN research.
- Score: 0.6445605125467572
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Recently, graph neural networks have become a hot topic in machine learning
community. This paper presents a Scopus based bibliometric overview of the GNNs
research since 2004, when GNN papers were first published. The study aims to
evaluate GNN research trend, both quantitatively and qualitatively. We provide
the trend of research, distribution of subjects, active and influential authors
and institutions, sources of publications, most cited documents, and hot
topics. Our investigations reveal that the most frequent subject categories in
this field are computer science, engineering, telecommunications, linguistics,
operations research and management science, information science and library
science, business and economics, automation and control systems, robotics, and
social sciences. In addition, the most active source of GNN publications is
Lecture Notes in Computer Science. The most prolific or impactful institutions
are found in the United States, China, and Canada. We also provide must read
papers and future directions. Finally, the application of graph convolutional
networks and attention mechanism are now among hot topics of GNN research.
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