AI boosts scientific productivity but erodes paper quality

A Cornell University study reveals that AI tools like ChatGPT have increased researchers' paper output by up to 50%, particularly benefiting non-native English speakers. However, this surge in polished manuscripts is complicating peer review and funding decisions, as many lack substantial scientific value. The findings highlight a shift in global research dynamics and call for updated policies on AI use in academia.

Since ChatGPT's widespread adoption in late 2022, scientists have reported higher productivity, with journal editors noting an influx of well-written but low-value submissions. A Cornell study, published on December 18, 2025, in Science, analyzed over 2 million preprints from arXiv, bioRxiv, and SSRN, spanning January 2018 to June 2024. Researchers developed a detector to identify LLM-assisted papers by comparing them to pre-2023 human-written ones.

The results show a clear productivity boost: authors likely using LLMs posted about one-third more papers on arXiv and over 50% more on bioRxiv and SSRN. The gains were most pronounced for non-native English speakers, with researchers from Asian institutions increasing output by 43% to 89.3%, depending on the platform. "It is a very widespread pattern, across different fields of science," said Yian Yin, assistant professor of information science at Cornell's Ann S. Bowers College of Computing and Information Science.

Beyond writing, AI search tools like Bing Chat improved literature reviews by surfacing newer, more diverse sources. First author Keigo Kusumegi noted, "People using LLMs are connecting to more diverse knowledge, which might be driving more creative ideas."

Yet, challenges emerge in evaluation. Human-written papers with complex language often signal quality and higher journal acceptance rates. In contrast, LLM-assisted papers, despite sophisticated prose, are less likely to be accepted, suggesting that polish no longer reliably indicates value. This disconnect could hinder editors, reviewers, and funders, as raw publication counts become misleading.

The observational study calls for experimental follow-ups and policy updates. Yin is hosting a symposium on March 3-5, 2026, in Ithaca to discuss AI's role in research. Co-authors include Xinyu Yang, Paul Ginsparg, Mathijs de Vaan, and Toby Stuart; funding came from the National Science Foundation.

As AI evolves into a "co-scientist," Yin emphasizes transparency: "The question is, how exactly have you used AI and whether it's helpful or not."

Articoli correlati

Illustration depicting OpenAI's ChatGPT-5.2 launch, showing professionals using the AI to enhance workplace productivity amid rivalry with Google's Gemini.
Immagine generata dall'IA

OpenAI releases ChatGPT-5.2 to boost work productivity

Riportato dall'IA Immagine generata dall'IA

OpenAI has launched ChatGPT-5.2, a new family of AI models designed to enhance reasoning and productivity, particularly for professional tasks. The release follows an internal alert from CEO Sam Altman about competition from Google's Gemini 3. The update includes three variants aimed at different user needs, starting with paid subscribers.

AI coding agents from companies like OpenAI, Anthropic, and Google enable extended work on software projects, including writing apps and fixing bugs under human oversight. These tools rely on large language models but face challenges like limited context processing and high computational costs. Understanding their mechanics helps developers decide when to deploy them effectively.

Riportato dall'IA

As AI platforms shift toward ad-based monetization, researchers warn that the technology could shape users' behavior, beliefs, and choices in unseen ways. This marks a turnabout for OpenAI, whose CEO Sam Altman once deemed the mix of ads and AI 'unsettling' but now assures that ads in AI apps can maintain trust.

Japan's Fair Trade Commission plans to launch a fact-finding investigation into search engines using generative AI for potentially unauthorized use of news articles from media organizations. This could violate the Antimonopoly Law through abuse of dominant position. Targets include major U.S. tech firms like Google and Microsoft.

Riportato dall'IA

Commonly used AI models, including ChatGPT and Gemini, often fail to provide adequate advice for urgent women's health issues, according to a new benchmark test. Researchers found that 60 percent of responses to specialized queries were insufficient, highlighting biases in AI training data. The study calls for improved medical content to address these gaps.

Music labels and tech companies are addressing the unauthorized use of artists' work in training AI music generators like Udio and Suno. Recent settlements with major labels aim to create new revenue streams, while innovative tools promise to remove unlicensed content from AI models. Artists remain cautious about the technology's impact on their livelihoods.

Riportato dall'IA

AerynOS, an alpha-stage Linux distribution, has implemented a policy banning large language models in its development and community activities. The move addresses ethical issues with training data, environmental impacts, and quality risks. Exceptions are limited to translation and accessibility needs.

 

 

 

Questo sito web utilizza i cookie

Utilizziamo i cookie per l'analisi per migliorare il nostro sito. Leggi la nostra politica sulla privacy per ulteriori informazioni.
Rifiuta