Complex-network approach for visualizing and quantifying the evolution of a scientific topic

07/03/2017
by   Olesya Mryglod, et al.
0

Tracing the evolution of specific topics is a subject area which belongs to the general problem of mapping the structure of scientific knowledge. Often bibliometric data bases are used to study the history of scientific topic evolution from its appearance to its extinction or merger with other topics. In this chapter the authors present an analysis of the academic response to the disaster that occurred in 1986 in Chornobyl (Chernobyl), Ukraine, considered as one of the most devastating nuclear power plant accidents in history. Using a bibliographic database the distributions of Chornobyl-related papers in different scientific fields are analysed, as are their growth rates and properties of co-authorship networks. Elements of descriptive statistics and tools of complex-network theory are used to highlight interdisciplinary as well as international effects. In particular, tools of complex-network science enable information visualization complemented by further quantitative analysis. A further goal of the chapter is to provide a simple pedagogical introduction to the application of complex-network analysis for visual data representation and interdisciplinary communication.

READ FULL TEXT

page 7

page 8

page 9

page 10

page 11

page 12

research
04/18/2017

Analysis of Computational Science Papers from ICCS 2001-2016 using Topic Modeling and Graph Theory

This paper presents results of topic modeling and network models of topi...
research
02/04/2016

Complex Networks of Words in Fables

In this chapter we give an overview of the application of complex networ...
research
03/05/2018

Dagger and dilations in the category of von Neumann algebras

This doctoral thesis is a mathematical study of quantum computing, conce...
research
08/07/2021

Scientific X-ray

The rapid development of modern science and technology has spawned rich ...
research
12/16/2020

Prizes Signal Scientific Revolutions

Scientific revolutions affect funding, investments, and technological ad...
research
05/27/2019

TrendNets: Mapping Research Trends From Dynamic Co-Word Networks via Sparse Representation

Mapping the knowledge structure from word co-occurrences in a collection...
research
05/27/2019

TrendNets: Mapping Emerging Research Trends From Dynamic Co-Word Networks via Sparse Representation

Mapping the knowledge structure from word co-occurrences in a collection...

Please sign up or login with your details

Forgot password? Click here to reset