How reliable and useful is Cabell's Blacklist ? A data-driven analysis
Christophe Dony, Maurane Raskinet, Fran\c{c}ois Renaville, St\'ephanie, Simon, Paul Thirion

TL;DR
This study critically evaluates Cabell's Blacklist, revealing issues in its transparency, consistency, and coverage, and suggests improvements for its reliability as a tool in scholarly publishing.
Contribution
The paper provides a data-driven analysis of Cabell's Blacklist, highlighting methodological flaws and offering recommendations to enhance its accuracy and transparency.
Findings
Nearly 46% of tested journals are on the blacklist.
Many blacklisted journals are empty or lack publications.
Identified inconsistencies and lack of transparency in blacklisting criteria.
Abstract
In scholarly publishing, blacklists aim to register fraudulent or deceptive journals and publishers, also known as "predatory", to minimise the spread of unreliable research and the growing of fake publishing outlets. However, blacklisting remains a very controversial activity for several reasons: there is no consensus regarding the criteria used to determine fraudulent journals, the criteria used may not always be transparent or relevant, and blacklists are rarely updated regularly. Cabell's paywalled blacklist service attempts to overcome some of these issues in reviewing fraudulent journals on the basis of transparent criteria and in providing allegedly up-to-date information at the journal entry level. We tested Cabell's blacklist to analyse whether or not it could be adopted as a reliable tool by stakeholders in scholarly communication, including our own academic library. To do so,…
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