Spinellis Diomidis
Department of Management Science and Technology, Athens University of Economics and Business, Patision 76, Athens, 104 34, Greece.
Department of Software Technology, Delft University of Technology, Mekelweg 5, Delft, 2668 CD, Netherlands.
Res Integr Peer Rev. 2025 May 27;10(1):8. doi: 10.1186/s41073-025-00165-z.
The proliferation of generative artificial intelligence (AI) has facilitated the creation and publication of fraudulent scientific articles, often in predatory journals. This study investigates the extent of AI-generated content in the Global International Journal of Innovative Research (GIJIR), where a fabricated article was falsely attributed to me.
The entire GIJIR website was crawled to collect article PDFs and metadata. Automated scripts were used to extract the number of probable in-text citations, DOIs, affiliations, and contact emails. A heuristic based on the number of in-text citations was employed to identify the probability of AI-generated content. A subset of articles was manually reviewed for AI indicators such as formulaic writing and missing empirical data. Turnitin's AI detection tool was used as an additional indicator. The extracted data were compiled into a structured dataset, which was analyzed to examine human-authored and AI-generated articles.
Of the 53 examined articles with the fewest in-text citations, at least 48 appeared to be AI-generated, while five showed signs of human involvement. Turnitin's AI detection scores confirmed high probabilities of AI-generated content in most cases, with scores reaching 100% for multiple papers. The analysis also revealed fraudulent authorship attribution, with AI-generated articles falsely assigned to researchers from prestigious institutions. The journal appears to use AI-generated content both to inflate its standing through misattributed papers and to attract authors aiming to inflate their publication record.
The findings highlight the risks posed by AI-generated and misattributed research articles, which threaten the credibility of academic publishing. Ways to mitigate these issues include strengthening identity verification mechanisms for DOIs and ORCIDs, enhancing AI detection methods, and reforming research assessment practices. Without effective countermeasures, the unchecked growth of AI-generated content in scientific literature could severely undermine trust in scholarly communication.
生成式人工智能(AI)的扩散助长了欺诈性科学文章的创作与发表,这些文章常见于掠夺性期刊。本研究调查了《全球创新研究国际期刊》(GIJIR)中人工智能生成内容的程度,该期刊曾有一篇伪造文章被错误地署上了我的名字。
对GIJIR整个网站进行爬取以收集文章PDF和元数据。使用自动化脚本提取文中可能的引用数量、数字对象标识符(DOI)、所属机构及联系邮箱。采用基于文中引用数量的启发式方法来确定人工智能生成内容的可能性。对一部分文章进行人工审查,寻找公式化写作和缺乏实证数据等人工智能指标。使用Turnitin的人工智能检测工具作为额外指标。将提取的数据整理成结构化数据集,对其进行分析以区分人工撰写和人工智能生成的文章。
在53篇文中引用最少的被审查文章中,至少48篇似乎是由人工智能生成的,而5篇显示有人为参与的迹象。Turnitin的人工智能检测分数在大多数情况下证实了人工智能生成内容的高可能性,多篇论文的分数达到了100%。分析还揭示了欺诈性的作者归属问题,人工智能生成的文章被错误地归到了知名机构的研究人员名下。该期刊似乎利用人工智能生成的内容,通过错误署名的论文来抬高自身地位,并吸引那些企图增加其发表记录的作者。
研究结果凸显了人工智能生成及错误署名的研究文章所带来的风险,这些风险威胁到学术出版的可信度。减轻这些问题的方法包括加强DOI和开放研究者与贡献者身份识别(ORCID)的身份验证机制、改进人工智能检测方法以及改革研究评估实践。如果没有有效的对策,科学文献中人工智能生成内容的无节制增长可能会严重破坏对学术交流的信任。