As scientists face a flood of papers, AI developers aim to help

When Iosif Gidiotis began his doctoral studies in educational technology this year, he was intrigued by reports that new tools powered by artificial intelligence (AI) could help him digest the literature in his discipline. With the number of papers burgeoning—across all of science, close to 3 million were published last year—an AI research assistant “sounds great,” says Gidiotis, who is studying at the KTH Royal Institute of Technology. He hoped AI could find more relevant papers than other search tools and summarize their highlights. He experienced a bit of a letdown. When he tried AI tools such as one called Elicit, he found that only some of the returned papers were relevant, and Elicit’s summaries weren’t accurate enough to win him over. “Your instinct is to read the actual paper to verify if the summary is correct, so it doesn’t save time,” he says. (Elicit says it is continuing to improve its algorithms for its 250,000 regular users, who in a survey credited it with saving them 90 minutes a week in reading and searching, on average.) Created in 2021 by a nonprofit research organization, Elicit is part of a growing stable of AI tools aiming to help scientists navigate the literature. “There’s an explosion of these platforms,” says Andrea Chiarelli, who follows AI tools in publishing for the firm Research Consulting. But their developers face challenges. Among them: The generative systems that power these tools are prone to ...
Source: ScienceNOW - Category: Science Source Type: news