Analysis of the Global Research Status of Graph Theory Based on
Bibliometrics
Furui Chen
1,* a
and Yubin Hu
2b
1
School of Political Science and Public Administration, Soochow University, Suzhou, Jiangsu, China
2
College of Chemistry, Chemical Engineering and Materials Science, Soochow University, Suzhou, Jiangsu, China
Keywords: Graph Theory, Bibliometrics, Development Trend, Visual Analysis.
Abstract: Graph theory, as a branch of operations research, has an ancient research history. In recent years, it has not
only broken new ground in its applications but also optimized its existing models with the help of new tools
such as neural networks and machine learning. Based on the Web of Sciences core database, this paper
analyses the number of annual papers, core authors, disciplinary layout, countries, and keywords. Using the
visual analysis software CiteSpace and VOSviewer, we can comprehensively reveal research trends, research
capabilities, and research directions Hotspots in the field of graph theory from 2012 to 2021. The results show
an overall upward trend in the development of graph theory research, with two countries, led by China and
the United States, dominating most of the research worldwide and collaborating to some extent. The research
direction of graph theory has also evolved from expanding applications to optimization models.
1 INTRODUCTION
Many real-world situations can conveniently be
described using a diagram consisting of a set of points
together with lines joining specific pairs of these
points. Notice that in such diagrams, one is mainly
interested in whether or not a line joins two given
points; how they are joined is immaterial. A
mathematical abstraction of situations of this type
gives rise to the concept of a graph (Bondy 1976). The
graph theory problem can be traced back to Euler's
1736 paper on the Seven Bridges Problem. As an
independent branch of mathematics, it is
characterized by simple models and strong
generalization. It is good at describing the
relationship between two things, so it has been widely
used in various fields such as management science,
computer science, and biology and has achieved
fruitful results. With society's development, new
methods such as deep learning and neural networks
are emerging to innovate and optimize theoretical
graph models.
On the other hand, theoretical graph models are
being applied to more research areas. With the
continuous development of modelling and solving
a
https://orcid.org/0000-0002-2689-7747
b
https://orcid.org/0000-0001-6350-8096
graph theoretical problems, there is an urgent need for
systematic analysis and review of the existing
research. Therefore, in this paper, we use a
bibliometric approach to organize and summarize the
research literature in this field in the past ten years
from different perspectives, summarize the relevant
publications, and show the development paths,
research hotspots, and possible future trends of graph
theory through data visualization.
2 MATERIALS AND METHODS
To ensure the authority and coverage of the analysed
data, the data source was selected as Web of Science
(Core Collection), the index was selected as SCI-
Expended and SSCI, and the search strategy was
selected as (TS= ("graph theory")), the period was
January 2012 to December 2021, the search
document type was Articles, and the language was
English. After screening and de-weighting, a total of
10124 papers were obtained. Please remember that all
the papers must be in English without orthographic
errors.