Ebook: Citation Analysis and Dynamics of Citation Networks
Author: Michael Golosovsky
- Tags: Physics, Data-driven Science Modeling and Theory Building, Complex Systems, Big Data, Big Data/Analytics
- Series: SpringerBriefs in Complexity
- Year: 2019
- Publisher: Springer International Publishing
- Edition: 1st ed. 2019
- Language: English
- pdf
This book deals with the science of science by applying network science methods to citation networks and uniquely presents a physics-inspired model of citation dynamics. This stochastic model of citation dynamics is based on a well-known copying or recursive search mechanism. The measurements covered in this text yield parameters of the model and reveal that citation dynamics of scientific papers is not linear, as was previously assumed. This nonlinearity has far-reaching consequences including non-stationary citation distributions, diverging citation trajectories of similar papers, and runaways or "immortal papers" with an infinite citation lifespan. The author shows us that nonlinear stochastic models of citation dynamics can be the basis for a quantitative probabilistic prediction of citation dynamics of individual papers and of the overall journal impact factor. This book appeals to students and researchers from differing subject areas working in network science and bibliometrics.