Visualizing a Field of Research: A Methodology of Systematic Scientometric Reviews
Chaomei Chen, Min Song

TL;DR
This paper introduces a flexible methodology called cascading citation expansion to improve the construction of bibliographic datasets for scientometric reviews, enhancing coverage and visualization of research fields.
Contribution
It proposes a novel, unified approach to dataset construction that addresses knowledge gaps and simplifies the conceptualization of science mapping in systematic reviews.
Findings
Cascading citation expansion improves dataset coverage.
The methodology unifies globalism and localism in science mapping.
Application demonstrates enhanced visualization of research structures.
Abstract
Systematic scientometric reviews, empowered by scientometric and visual analytic techniques, offer opportunities to improve the timeliness, accessibility, and reproducibility of conventional systematic reviews. While increasingly accessible science mapping tools enable end users to visualize the structure and dynamics of a research field, a common bottleneck in the current practice is the construction of a collection of scholarly publications as the input of the subsequent scientometric analysis and visualization. End users often have to face a dilemma in the preparation process: the more they know about a knowledge domain, the easier it is for them to find the relevant data to meet their needs adequately; the little they know, the harder the problem is. What can we do to avoid missing something valuable but beyond our initial description? In this article, we introduce a flexible and…
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