
Research repository ArXiv will ban authors for a year if they let AI do all the work
Quick Answer
ArXiv will impose a one-year ban on authors who rely entirely on AI for their research submissions, aiming to address the irresponsible use of large language models like GPT-3.
Quick Take
ArXiv will impose a one-year ban on authors who rely entirely on AI for their research submissions, aiming to address the irresponsible use of large language models like GPT-3. This policy seeks to maintain the integrity of scientific contributions by ensuring that human authorship remains central in the research process.
Key Points
- Authors using AI-generated content without human oversight face a one-year ban.
- The policy targets irresponsible use of large language models in scientific papers.
- ArXiv aims to preserve the integrity of academic research submissions.
- This move reflects growing concerns over AI's role in scholarly work.
📖 Reader Mode
~2 min readArXiv, a widely used open repository for preprint research, is doing more to crack down on the careless use of large language models in scientific papers.
Although papers are posted to the site before they are peer-reviewed, arXiv (pronounced “archive”) has become one of the main ways that research circulates in fields like computer science and math, and the site has become a source of data on trends in scientific research.
ArXiv has already taken steps to combat a growing number of low-quality, AI-generated papers — for example, by requiring first-time posters to get an endorsement from an established author. And after being hosted by Cornell for more than 20 years, the organization is becoming an independent nonprofit, which should allow it to raise more money to address issues like AI slop.
In its latest move, Thomas Dietterich — the chair of arXiv’s computer science section — posted Thursday that “if a submission contains incontrovertible evidence that the authors did not check the results of LLM generation, this means we can’t trust anything in the paper.”
That incontrovertible evidence could include things like “hallucinated references” and comments to or from the LLM, Dietterich said. If such evidence is found, a paper’s authors will face “a 1-year ban from arXiv followed by the requirement that subsequent arXiv submissions must first be accepted by a reputable peer-reviewed venue.”
Note that this isn’t an outright prohibition on using LLMs, but rather an insistence that, as Dietterich put it, authors take “full responsibility” for the content, “irrespective of how the contents are generated.” So if researchers copy-paste “inappropriate language, plagiarized content, biased content, errors, mistakes, incorrect references, or misleading content” directly from an LLM, then they’re still responsible for it.
Dietterich told 404 Media that this will be a “one-strike” rule, but moderators must flag the issue and section chairs must confirm the evidence before imposing the penalty. Authors will also be able to appeal the decision.
Recent peer-reviewed research has found that fabricated citations are on the rise in biomedical research, likely due to LLMs — though, to be fair, scientists aren’t the only ones getting caught using citations that were made up by AI.
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Anthony Ha is TechCrunch’s weekend editor. Previously, he worked as a tech reporter at Adweek, a senior editor at VentureBeat, a local government reporter at the Hollister Free Lance, and vice president of content at a VC firm. He lives in New York City.
You can contact or verify outreach from Anthony by emailing anthony.ha@techcrunch.com.
— Originally published at techcrunch.com
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