This just in(novation): NSF grant is good news for researchers studying journalism, recommender systems
By Joe Arney
Robin Burke is very familiar with the original news recommender system.Ģż
Before he was a respected expert in the recommender systems that are key to digital lifeāeverything from suggesting the next song in a playlist, to suggesting an online dating partnerāBurke wore many hats at the community newspaper his father ran in California. Doing odd jobs as a photographer, darkroom technician, reporter and proofreader, Burke got to see how editors would shape each edition and choose which stories got the most play.
āNow, all that context, and that control over priorities, has shifted to these platforms, whether itās your social media feed or an app like Google News,ā said Burke, professor and chair of the Information Science department. āThat journalistic voice isnāt there anymore.āĢż
Burke is part of a team of researchers from a group of top schools, including Minnesota, Northwestern and Clemson, that is seeking to better understand how digital recommender systems are performing the tasks once left to professional editors. The team secured a $2 million grant from the National Science Foundation to build a platform for researchers eager to experiment with the artificial intelligence that powers news recommender systems.Ģż
Ģż āWe have put all this control over the public square of journalistic discourse into the hands of companies that donāt have any transparency or accountability relative to what theyāre doing. I think thatās dangerous.āā
ĢżĢż Ģż- Robin Burke, professor and chair
ĢżĢż ĢżInformation Science
It could be game-changing technical infrastructure for academic researchers, who are locked out of the proprietary systems built and studied by tech and social media companies.Ģż
āThe people who do this kind of research in industry donāt publish very much about it, so we don't know exactly what's going on in terms of how their systems work, or how well they work,ā Burke said. āSo the people at Google News, for instance, can do these experiments, but people like me canāt.ā
Hot off the digital presses
It's an urgent consideration because the way we get our news is changingāa 2022 Pew Research Center survey found one in 10 U.S. adults get their news on TikTok; for American adults under 30, itās more like one in four.

Those alternatives are bigger than just how news is recommended. The business model governing recommendations is optimized to sell ads while keeping users on a platform. As part of his work, Burke hopes researchers can experiment with alternative incentives that reimagine how we engage with technology.Ģż
That ties back to Burkeās main research thread, which concerns bias in recommender systems. His work aims to create āfairness-awareā algorithms that eliminate inequality around, for instance, gender and ethnicityāwhich is closely related to what heās building through NSF.
āIf a system only shows us the news stories of one group of people, we begin to think that is the whole universe of news we need to pay attention to,ā he said.
Some of the early deliverables of the project may include a newsletterādelivered through a major national news outletāthat would deliver recommendations to readers through a daily news update, and eventually a mobile news app that will help researchers understand the effectiveness of recommender systems in this space.Ģż
If those projects are successful, Burkeās team will apply for additional NSF funding to further build out a robust system that will eventually become self-funded through contributions from other researchers.Ģż
āTo do this right, you need scientific infrastructureāthe same way they build space telescopes and supercolliders,ā Burke said. āThis grant is about creating a piece of research infrastructure where somebody can come to the project and say, āHereās my experiment, hereās my code, I want to deliver recommendations to a thousand users over six months and see what happens.āā