New AI tool identifies 1,000 'questionable' scientific journals

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A team of computer scientists led by the 51勛圖厙 has developed a new artificial intelligence platform that automatically seeks out questionable scientific journals.
The study, in the journal Science Advances, tackles an alarming trend in the world of research.
Daniel Acu簽a, lead author of the study and associate professor in the Department of Computer Science, gets a reminder of that several times a week in his email inbox: These spam messages come from people who purport to be editors at scientific journals, usually ones Acu簽a has never heard of, and offer to publish his papersfor a hefty fee.
Such publications are sometimes referred to as predatory journals. They target scientists, convincing them to pay hundreds or even thousands of dollars to publish their research without proper vetting.

Daniel Acu簽a
There has been a growing effort among scientists and organizations to vet these journals, Acu簽a said. But its like whack-a-mole. You catch one, and then another appears, usually from the same company. They just create a new website and come up with a new name.
His groups new AI tool automatically screens scientific journals, evaluating their websites and other online data for certain criteria: Do the journals have an editorial board featuring established researchers? Do their websites contain a lot of grammatical errors?
Acu簽a emphasizes that the tool isnt perfect. Ultimately, he thinks human experts, not machines, should make the final call on whether a journal is reputable.
But in an era when prominent figures are questioning the legitimacy of science, stopping the spread of questionable publications has become more important than ever before, he said.
In science, you dont start from scratch. You build on top of the research of others, Acu簽a said. So if the foundation of that tower crumbles, then the entire thing collapses.
The shake down
When scientists submit a new study to a reputable publication, that study usually undergoes a practice called peer review. Outside experts read the study and evaluate it for qualityor, at least, thats the goal. 泭
A growing number of companies have sought to circumvent that process to turn a profit. In 2009, Jeffrey Beall, a librarian at CU Denver, coined the phrase predatory journals to describe these publications.
Often, they target researchers outside of the United States and Europe, such as in China, India and Irancountries where scientific institutions may be young, and the pressure and incentives for researchers to publish are high.
They will say, If you pay $500 or $1,000, we will review your paper, Acu簽a said. In reality, they dont provide any service. They just take the PDF and post it on their website.
A few different groups have sought to curb the practice. Among them is a nonprofit organization called the (DOAJ). Since 2003, volunteers at the DOAJ have flagged thousands of journals as suspicious based on six criteria. (Reputable publications, for example, tend to include a detailed description of their peer review policies on their websites.)
But keeping pace with the spread of those publications has been daunting for humans.
To speed up the process, Acu簽a and his colleagues turned to AI. The team trained its system using the DOAJs data, then asked the AI to sift through a list of nearly 15,200 open-access journals on the internet.
Among those journals, the AI initially flagged more than 1,400 as potentially problematic.
Acu簽a and his colleagues asked human experts to review a subset of the suspicious journals. The AI made mistakes, according to the humans, flagging an estimated 350 publications as questionable when they were likely legitimate. That still left more than 1,000 journals that the researchers identified as questionable.
I think this should be used as a helper to prescreen large numbers of journals, he said. But human professionals should do the final analysis.
A firewall for science
Acu簽a added that the researchers didn't want their system to be a "black box" like some other AI platforms.
With ChatGPT, for example, you often dont understand why its suggesting something, Acu簽a said. We tried to make ours as interpretable as possible.
The team discovered, for example, that questionable journals published an unusually high number of articles. They also included authors with a larger number of affiliations than more legitimate journals, and authors who cited their own research, rather than the research of other scientists, to an unusually high level.
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The new AI system isnt publicly accessible, but the researchers hope to make it available to universities and publishing companies soon. Acu簽a sees the tool as one way that researchers can protect their fields from bad datawhat he calls a firewall for science.
As a computer scientist, I often give the example of when a new smartphone comes out, he said. We know the phone's software will have flaws, and we expect bug fixes to come in the future. We should probably do the same with science.
Co-authors on the study included Han Zhuang at the Eastern Institute of Technology in China and Lizheng Liang at Syracuse University in the United States.
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