pyBiblioNet: a Python library for a comprehensive network-based bibliometric analysis
Mirko Lai, Salvatore Vilella, Federica Cena, Giancarlo Ruffo

TL;DR
pyBiblioNet is a Python library that enables comprehensive network-based bibliometric analysis, integrating with OpenAlex to analyze citation, co-authorship, and keyword networks for scientific research insights.
Contribution
The paper introduces pyBiblioNet, a new Python library that simplifies and enhances bibliometric analysis through network visualization and NLP techniques, filling gaps in traditional methods.
Findings
Demonstrated utility on the '15-minute city' research domain.
Enabled detection of hidden patterns and emerging trends.
Provided a user-friendly tool for researchers and policymakers.
Abstract
Bibliometric analysis is a critical tool for understanding the structure, dynamics, and impact of scientific research. Traditional methods often fall short in capturing the intricate relationships and evolving trends within scientific literature. To address this gap, we present pyBiblioNet, a Python library designed to facilitate comprehensive network-based bibliometric analysis, providing insights into citation networks, co-authorship networks, and keyword co-occurrence networks. The library integrates with OpenAlex, a popular and open catalogue to the global research system, enabling users to easily preprocess, visualize, and analyse bibliometric data. Key features include topic selection, automatic data download via OpenAlex APIs, creation of the root and base sets of manuscripts to analyze, creation of the citation and co-authorship networks, network visualization tools, and a suite…
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Taxonomy
Topicsscientometrics and bibliometrics research · Complex Network Analysis Techniques · Bioinformatics and Genomic Networks
