Misconduct, Mishaps, and Misranking in Bibliometric Databases: Inflating the Production and Impact of Scientists
1. Introduction
2. Manipulation Tactics
2.1. Inflating the Number of Published Articles
2.2. Inflating the Number of Received Citations
3. Discussion
- Lack of verified email domain: Legitimate profiles often have a “Verified email at [institution]” label next to their name. Fake profiles usually do not have this.
- Unrelated publications: Check if the listed publications seem random or unrelated to the claimed field of expertise. Fake profiles often have unrelated or suspicious titles.
- Suspicious citation patterns: If a profile has an unusually high number of citations or self-citations (i.e., citing their own papers excessively), this could be a red flag.
- Inconsistent or incorrect details: Look for inconsistencies in the bio, institution, or profile picture. Often, fake profiles copy famous researchers’ publications or use generic images.
- No academic history or institution links: Fake profiles may not be linked to any institution’s website and have minimal information about the researcher’s background.
- Recent account creation with excessive citations: If an account is newly created but shows an unusually high number of citations in a short time, it could be suspicious.
- Publication list with too many asterisks after article entries: The asterisks represent a merging of articles; in cases of editorial misconduct, they can be used to extensively increase the citation count of an author.
- Transparent Citation Practices: Journals and institutions can encourage authors to provide some reasoning behind their citations and avoid unnecessary self-citations or loose citations. Of course, this is rather difficult to apply to all publications. Editors and reviewers can play a significant role in safeguarding the integrity of publications. Moreover, ensuring a diverse range of reviewers are included in peer-review processes can help minimize the bias caused by citation circles. Additionally, concepts such as coterminal citations [14] and their used in indices can be used for tracking phenomena such as citation circles or excessive self-citing.
- Metrics Beyond Citations: Academic institutions can adopt more holistic measures of research impact. These should go beyond citation counts and could include other metrics such as societal impact or collaborations outside an author’s discipline. Many institutions are already taking action in this direction.
- Algorithmic Monitoring: Some organizations have developed tools to monitor and detect suspicious citation patterns, alerting editors or institutions to potential citation manipulation.
- Correlation between citation metrics: Comparing and correlating GS with WoS, Scopus, or other databases can provide a more accurate reflection of a scholar’s real merit.
- Use of databases that cannot be edited by the user: One such recent initiative comes from a Stanford University professor and Elsevier, which annually publishes a ranking that identifies the top 2% of the most influential researchers using data from Scopus.
- Detection of fake GS profiles: The authors of [23] present a machine learning-based method to detect misconfigured author profiles. GS can use these tools to detect and retract fake profiles.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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ID | Google Scholar | SCOPUS | Drop | Method |
---|---|---|---|---|
Author 1 | 72,000 | 130 | 99% | Article Inclusion |
Author 2 | 480,000 | 3500 | 99% | Name Merging |
Author 3 | 19,000 | 3500 | 81% | Editorial Merging |
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Maglaras, L.; Katsaros, D. Misconduct, Mishaps, and Misranking in Bibliometric Databases: Inflating the Production and Impact of Scientists. Computers 2024, 13, 287. https://doi.org/10.3390/computers13110287
Maglaras L, Katsaros D. Misconduct, Mishaps, and Misranking in Bibliometric Databases: Inflating the Production and Impact of Scientists. Computers. 2024; 13(11):287. https://doi.org/10.3390/computers13110287
Chicago/Turabian StyleMaglaras, Leandros, and Dimitrios Katsaros. 2024. "Misconduct, Mishaps, and Misranking in Bibliometric Databases: Inflating the Production and Impact of Scientists" Computers 13, no. 11: 287. https://doi.org/10.3390/computers13110287
APA StyleMaglaras, L., & Katsaros, D. (2024). Misconduct, Mishaps, and Misranking in Bibliometric Databases: Inflating the Production and Impact of Scientists. Computers, 13(11), 287. https://doi.org/10.3390/computers13110287